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.. highlight:: c++
.. default-domain:: cpp
.. cpp:namespace:: ceres
.. _chapter-nnls_solving:
================================
Solving Non-linear Least Squares
================================
Introduction
============
Effective use of Ceres Solver requires some familiarity with the basic
components of a non-linear least squares solver, so before we describe
how to configure and use the solver, we will take a brief look at how
some of the core optimization algorithms in Ceres Solver work.
Let :math:`x \in \mathbb{R}^n` be an :math:`n`-dimensional vector of
variables, and
:math:`F(x) = \left[f_1(x), ... , f_{m}(x) \right]^{\top}` be a
:math:`m`-dimensional function of :math:`x`. We are interested in
solving the optimization problem [#f1]_
.. math:: \arg \min_x \frac{1}{2}\|F(x)\|^2\ . \\
L \le x \le U
:label: nonlinsq
Where, :math:`L` and :math:`U` are vector lower and upper bounds on
the parameter vector :math:`x`. The inequality holds component-wise.
Since the efficient global minimization of :eq:`nonlinsq` for
general :math:`F(x)` is an intractable problem, we will have to settle
for finding a local minimum.
In the following, the Jacobian :math:`J(x)` of :math:`F(x)` is an
:math:`m\times n` matrix, where :math:`J_{ij}(x) = D_j f_i(x)`
and the gradient vector is :math:`g(x) = \nabla \frac{1}{2}\|F(x)\|^2
= J(x)^\top F(x)`.
The general strategy when solving non-linear optimization problems is
to solve a sequence of approximations to the original problem
[NocedalWright]_. At each iteration, the approximation is solved to
determine a correction :math:`\Delta x` to the vector :math:`x`. For
non-linear least squares, an approximation can be constructed by using
the linearization :math:`F(x+\Delta x) \approx F(x) + J(x)\Delta x`,
which leads to the following linear least squares problem:
.. math:: \min_{\Delta x} \frac{1}{2}\|J(x)\Delta x + F(x)\|^2
:label: linearapprox
Unfortunately, naively solving a sequence of these problems and
updating :math:`x \leftarrow x+ \Delta x` leads to an algorithm that
may not converge. To get a convergent algorithm, we need to control
the size of the step :math:`\Delta x`. Depending on how the size of
the step :math:`\Delta x` is controlled, non-linear optimization
algorithms can be divided into two major categories [NocedalWright]_.
1. **Trust Region** The trust region approach approximates the
objective function using a model function (often a quadratic) over
a subset of the search space known as the trust region. If the
model function succeeds in minimizing the true objective function
the trust region is expanded; conversely, otherwise it is
contracted and the model optimization problem is solved again.
2. **Line Search** The line search approach first finds a descent
direction along which the objective function will be reduced and
then computes a step size that decides how far should move along
that direction. The descent direction can be computed by various
methods, such as gradient descent, Newton's method and Quasi-Newton
method. The step size can be determined either exactly or
inexactly.
Trust region methods are in some sense dual to line search methods:
trust region methods first choose a step size (the size of the trust
region) and then a step direction while line search methods first
choose a step direction and then a step size. Ceres Solver implements
multiple algorithms in both categories.
.. _section-trust-region-methods:
Trust Region Methods
====================
The basic trust region algorithm looks something like this.
1. Given an initial point :math:`x` and a trust region radius :math:`\mu`.
2. Solve
.. math::
\arg \min_{\Delta x}& \frac{1}{2}\|J(x)\Delta x + F(x)\|^2 \\
\text{such that} &\|D(x)\Delta x\|^2 \le \mu\\
&L \le x + \Delta x \le U.
3. :math:`\rho = \frac{\displaystyle \|F(x + \Delta x)\|^2 -
\|F(x)\|^2}{\displaystyle \|J(x)\Delta x + F(x)\|^2 -
\|F(x)\|^2}`
4. if :math:`\rho > \epsilon` then :math:`x = x + \Delta x`.
5. if :math:`\rho > \eta_1` then :math:`\mu = 2 \mu`
6. else if :math:`\rho < \eta_2` then :math:`\mu = 0.5 * \mu`
7. Go to 2.
Here, :math:`\mu` is the trust region radius, :math:`D(x)` is some
matrix used to define a metric on the domain of :math:`F(x)` and
:math:`\rho` measures the quality of the step :math:`\Delta x`, i.e.,
how well did the linear model predict the decrease in the value of the
non-linear objective. The idea is to increase or decrease the radius
of the trust region depending on how well the linearization predicts
the behavior of the non-linear objective, which in turn is reflected
in the value of :math:`\rho`.
The key computational step in a trust-region algorithm is the solution
of the constrained optimization problem
.. math::
\arg \min_{\Delta x}&\quad \frac{1}{2}\|J(x)\Delta x + F(x)\|^2 \\
\text{such that} &\quad \|D(x)\Delta x\|^2 \le \mu\\
&\quad L \le x + \Delta x \le U.
:label: trp
There are a number of different ways of solving this problem, each
giving rise to a different concrete trust-region algorithm. Currently,
Ceres implements two trust-region algorithms - Levenberg-Marquardt
and Dogleg, each of which is augmented with a line search if bounds
constraints are present [Kanzow]_. The user can choose between them by
setting :member:`Solver::Options::trust_region_strategy_type`.
.. rubric:: Footnotes
.. [#f1] At the level of the non-linear solver, the block structure is
not relevant, therefore our discussion here is in terms of an
optimization problem defined over a state vector of size
:math:`n`. Similarly the presence of loss functions is also
ignored as the problem is internally converted into a pure
non-linear least squares problem.
.. _section-levenberg-marquardt:
Levenberg-Marquardt
-------------------
The Levenberg-Marquardt algorithm [Levenberg]_ [Marquardt]_ is the
most popular algorithm for solving non-linear least squares problems.
It was also the first trust region algorithm to be developed
[Levenberg]_ [Marquardt]_. Ceres implements an exact step [Madsen]_
and an inexact step variant of the Levenberg-Marquardt algorithm
[WrightHolt]_ [NashSofer]_.
It can be shown, that the solution to :eq:`trp` can be obtained by
solving an unconstrained optimization of the form
.. math:: \arg\min_{\Delta x} \frac{1}{2}\|J(x)\Delta x + F(x)\|^2 +\lambda \|D(x)\Delta x\|^2
:label: lsqr-naive
Where, :math:`\lambda` is a Lagrange multiplier that is inversely
related to :math:`\mu`. In Ceres, we solve for
.. math:: \arg\min_{\Delta x} \frac{1}{2}\|J(x)\Delta x + F(x)\|^2 + \frac{1}{\mu} \|D(x)\Delta x\|^2
:label: lsqr
The matrix :math:`D(x)` is a non-negative diagonal matrix, typically
the square root of the diagonal of the matrix :math:`J(x)^\top J(x)`.
Before going further, let us make some notational simplifications.
We will assume that the matrix :math:`\frac{1}{\sqrt{\mu}} D` has been
concatenated at the bottom of the matrix :math:`J(x)` and a
corresponding vector of zeroes has been added to the bottom of
:math:`F(x)`, i.e.:
.. math:: J(x) = \begin{bmatrix} J(x) \\ \frac{1}{\sqrt{\mu}} D
\end{bmatrix},\quad F(x) = \begin{bmatrix} F(x) \\ 0
\end{bmatrix}.
This allows us to re-write :eq:`lsqr` as
.. math:: \min_{\Delta x} \frac{1}{2} \|J(x)\Delta x + F(x)\|^2 .
:label: simple
and only talk about :math:`J(x)` and :math:`F(x)` going forward.
For all but the smallest problems the solution of :eq:`simple` in each
iteration of the Levenberg-Marquardt algorithm is the dominant
computational cost. Ceres provides a number of different options for
solving :eq:`simple`. There are two major classes of methods -
factorization and iterative.
The factorization methods are based on computing an exact solution of
:eq:`lsqr` using a Cholesky or a QR factorization and lead to the so
called exact step Levenberg-Marquardt algorithm. But it is not clear
if an exact solution of :eq:`lsqr` is necessary at each step of the
Levenberg-Mardquardt algorithm. We have already seen evidence that
this may not be the case, as :eq:`lsqr` is itself a regularized
version of :eq:`linearapprox`. Indeed, it is possible to construct
non-linear optimization algorithms in which the linearized problem is
solved approximately. These algorithms are known as inexact Newton or
truncated Newton methods [NocedalWright]_.
An inexact Newton method requires two ingredients. First, a cheap
method for approximately solving systems of linear
equations. Typically an iterative linear solver like the Conjugate
Gradients method is used for this purpose [NocedalWright]_. Second, a
termination rule for the iterative solver. A typical termination rule
is of the form
.. math:: \|H(x) \Delta x + g(x)\| \leq \eta_k \|g(x)\|.
:label: inexact
Here, :math:`k` indicates the Levenberg-Marquardt iteration number and
:math:`0 < \eta_k <1` is known as the forcing sequence. [WrightHolt]_
prove that a truncated Levenberg-Marquardt algorithm that uses an
inexact Newton step based on :eq:`inexact` converges for any
sequence :math:`\eta_k \leq \eta_0 < 1` and the rate of convergence
depends on the choice of the forcing sequence :math:`\eta_k`.
Ceres supports both exact and inexact step solution strategies. When
the user chooses a factorization based linear solver, the exact step
Levenberg-Marquardt algorithm is used. When the user chooses an
iterative linear solver, the inexact step Levenberg-Marquardt
algorithm is used.
We will talk more about the various linear solvers that you can use in
:ref:`section-linear-solver`.
.. _section-dogleg:
Dogleg
------
Another strategy for solving the trust region problem :eq:`trp` was
introduced by
`M. J. D. Powell <https://en.wikipedia.org/wiki/Michael_J._D._Powell>`_. The
key idea there is to compute two vectors
.. math::
\Delta x^{\text{Gauss-Newton}} &= \arg \min_{\Delta x}\frac{1}{2} \|J(x)\Delta x + f(x)\|^2.\\
\Delta x^{\text{Cauchy}} &= -\frac{\|g(x)\|^2}{\|J(x)g(x)\|^2}g(x).
Note that the vector :math:`\Delta x^{\text{Gauss-Newton}}` is the
solution to :eq:`linearapprox` and :math:`\Delta
x^{\text{Cauchy}}` is the vector that minimizes the linear
approximation if we restrict ourselves to moving along the direction
of the gradient. Dogleg methods finds a vector :math:`\Delta x`
defined by :math:`\Delta x^{\text{Gauss-Newton}}` and :math:`\Delta
x^{\text{Cauchy}}` that solves the trust region problem. Ceres
supports two variants that can be chose by setting
:member:`Solver::Options::dogleg_type`.
``TRADITIONAL_DOGLEG`` as described by Powell, constructs two line
segments using the Gauss-Newton and Cauchy vectors and finds the point
farthest along this line shaped like a dogleg (hence the name) that is
contained in the trust-region. For more details on the exact reasoning
and computations, please see Madsen et al [Madsen]_.
``SUBSPACE_DOGLEG`` is a more sophisticated method that considers the
entire two dimensional subspace spanned by these two vectors and finds
the point that minimizes the trust region problem in this subspace
[ByrdSchnabel]_.
The key advantage of the Dogleg over Levenberg-Marquardt is that if
the step computation for a particular choice of :math:`\mu` does not
result in sufficient decrease in the value of the objective function,
Levenberg-Marquardt solves the linear approximation from scratch with
a smaller value of :math:`\mu`. Dogleg on the other hand, only needs
to compute the interpolation between the Gauss-Newton and the Cauchy
vectors, as neither of them depend on the value of :math:`\mu`. As a
result the Dogleg method only solves one linear system per successful
step, while Levenberg-Marquardt may need to solve an arbitrary number
of linear systems before it can make progress [LourakisArgyros]_.
A disadvantage of the Dogleg implementation in Ceres Solver is that is
can only be used with method can only be used with exact factorization
based linear solvers.
.. _section-inner-iterations:
Inner Iterations
----------------
Some non-linear least squares problems have additional structure in
the way the parameter blocks interact that it is beneficial to modify
the way the trust region step is computed. For example, consider the
following regression problem
.. math:: y = a_1 e^{b_1 x} + a_2 e^{b_3 x^2 + c_1}
Given a set of pairs :math:`\{(x_i, y_i)\}`, the user wishes to estimate
:math:`a_1, a_2, b_1, b_2`, and :math:`c_1`.
Notice that the expression on the left is linear in :math:`a_1` and
:math:`a_2`, and given any value for :math:`b_1, b_2` and :math:`c_1`,
it is possible to use linear regression to estimate the optimal values
of :math:`a_1` and :math:`a_2`. It's possible to analytically
eliminate the variables :math:`a_1` and :math:`a_2` from the problem
entirely. Problems like these are known as separable least squares
problem and the most famous algorithm for solving them is the Variable
Projection algorithm invented by Golub & Pereyra [GolubPereyra]_.
Similar structure can be found in the matrix factorization with
missing data problem. There the corresponding algorithm is known as
Wiberg's algorithm [Wiberg]_.
Ruhe & Wedin present an analysis of various algorithms for solving
separable non-linear least squares problems and refer to *Variable
Projection* as Algorithm I in their paper [RuheWedin]_.
Implementing Variable Projection is tedious and expensive. Ruhe &
Wedin present a simpler algorithm with comparable convergence
properties, which they call Algorithm II. Algorithm II performs an
additional optimization step to estimate :math:`a_1` and :math:`a_2`
exactly after computing a successful Newton step.
This idea can be generalized to cases where the residual is not
linear in :math:`a_1` and :math:`a_2`, i.e.,
.. math:: y = f_1(a_1, e^{b_1 x}) + f_2(a_2, e^{b_3 x^2 + c_1})
In this case, we solve for the trust region step for the full problem,
and then use it as the starting point to further optimize just `a_1`
and `a_2`. For the linear case, this amounts to doing a single linear
least squares solve. For non-linear problems, any method for solving
the :math:`a_1` and :math:`a_2` optimization problems will do. The
only constraint on :math:`a_1` and :math:`a_2` (if they are two
different parameter block) is that they do not co-occur in a residual
block.
This idea can be further generalized, by not just optimizing
:math:`(a_1, a_2)`, but decomposing the graph corresponding to the
Hessian matrix's sparsity structure into a collection of
non-overlapping independent sets and optimizing each of them.
Setting :member:`Solver::Options::use_inner_iterations` to ``true``
enables the use of this non-linear generalization of Ruhe & Wedin's
Algorithm II. This version of Ceres has a higher iteration
complexity, but also displays better convergence behavior per
iteration.
Setting :member:`Solver::Options::num_threads` to the maximum number
possible is highly recommended.
.. _section-non-monotonic-steps:
Non-monotonic Steps
-------------------
Note that the basic trust-region algorithm described in
:ref:`section-trust-region-methods` is a descent algorithm in that it
only accepts a point if it strictly reduces the value of the objective
function.
Relaxing this requirement allows the algorithm to be more efficient in
the long term at the cost of some local increase in the value of the
objective function.
This is because allowing for non-decreasing objective function values
in a principled manner allows the algorithm to *jump over boulders* as
the method is not restricted to move into narrow valleys while
preserving its convergence properties.
Setting :member:`Solver::Options::use_nonmonotonic_steps` to ``true``
enables the non-monotonic trust region algorithm as described by Conn,
Gould & Toint in [Conn]_.
Even though the value of the objective function may be larger than the
minimum value encountered over the course of the optimization, the
final parameters returned to the user are the ones corresponding to
the minimum cost over all iterations.
The option to take non-monotonic steps is available for all trust
region strategies.
.. _section-line-search-methods:
Line Search Methods
===================
.. NOTE::
The line search method in Ceres Solver cannot handle bounds
constraints right now, so it can only be used for solving
unconstrained problems.
The basic line search algorithm looks something like this:
1. Given an initial point :math:`x`
2. :math:`\Delta x = -H^{-1}(x) g(x)`
3. :math:`\arg \min_\mu \frac{1}{2} \| F(x + \mu \Delta x) \|^2`
4. :math:`x = x + \mu \Delta x`
5. Goto 2.
Here :math:`H(x)` is some approximation to the Hessian of the
objective function, and :math:`g(x)` is the gradient at
:math:`x`. Depending on the choice of :math:`H(x)` we get a variety of
different search directions :math:`\Delta x`.
Step 4, which is a one dimensional optimization or `Line Search` along
:math:`\Delta x` is what gives this class of methods its name.
Different line search algorithms differ in their choice of the search
direction :math:`\Delta x` and the method used for one dimensional
optimization along :math:`\Delta x`. The choice of :math:`H(x)` is the
primary source of computational complexity in these
methods. Currently, Ceres Solver supports four choices of search
directions, all aimed at large scale problems.
1. ``STEEPEST_DESCENT`` This corresponds to choosing :math:`H(x)` to
be the identity matrix. This is not a good search direction for
anything but the simplest of the problems. It is only included here
for completeness.
2. ``NONLINEAR_CONJUGATE_GRADIENT`` A generalization of the Conjugate
Gradient method to non-linear functions. The generalization can be
performed in a number of different ways, resulting in a variety of
search directions. Ceres Solver currently supports
``FLETCHER_REEVES``, ``POLAK_RIBIERE`` and ``HESTENES_STIEFEL``
directions.
3. ``BFGS`` A generalization of the Secant method to multiple
dimensions in which a full, dense approximation to the inverse
Hessian is maintained and used to compute a quasi-Newton step
[NocedalWright]_. ``BFGS`` and its limited memory variant ``LBFGS``
are currently the best known general quasi-Newton algorithm.
4. ``LBFGS`` A limited memory approximation to the full ``BFGS``
method in which the last `M` iterations are used to approximate the
inverse Hessian used to compute a quasi-Newton step [Nocedal]_,
[ByrdNocedal]_.
Currently Ceres Solver supports both a backtracking and interpolation
based `Armijo line search algorithm
<https://en.wikipedia.org/wiki/Backtracking_line_search>`_ (``ARMIJO``)
, and a sectioning / zoom interpolation (strong) `Wolfe condition line
search algorithm <https://en.wikipedia.org/wiki/Wolfe_conditions>`_
(``WOLFE``).
.. NOTE::
In order for the assumptions underlying the ``BFGS`` and ``LBFGS``
methods to be satisfied the ``WOLFE`` algorithm must be used.
.. _section-linear-solver:
Linear Solvers
==============
Observe that for both of the trust-region methods described above, the
key computational cost is the solution of a linear least squares
problem of the form
.. math:: \min_{\Delta x} \frac{1}{2} \|J(x)\Delta x + F(x)\|^2 .
:label: simple2
Let :math:`H(x)= J(x)^\top J(x)` and :math:`g(x) = -J(x)^\top
F(x)`. For notational convenience let us also drop the dependence on
:math:`x`. Then it is easy to see that solving :eq:`simple2` is
equivalent to solving the *normal equations*.
.. math:: H \Delta x = g
:label: normal
Ceres provides a number of different options for solving :eq:`normal`.
.. _section-qr:
DENSE_QR
--------
For small problems (a couple of hundred parameters and a few thousand
residuals) with relatively dense Jacobians, QR-decomposition is the
method of choice [Bjorck]_. Let :math:`J = QR` be the QR-decomposition
of :math:`J`, where :math:`Q` is an orthonormal matrix and :math:`R`
is an upper triangular matrix [TrefethenBau]_. Then it can be shown
that the solution to :eq:`normal` is given by
.. math:: \Delta x^* = -R^{-1}Q^\top f
You can use QR-decomposition by setting
:member:`Solver::Options::linear_solver_type` to ``DENSE_QR``.
By default (``Solver::Options::dense_linear_algebra_library_type =
EIGEN``) Ceres Solver will use `Eigen Householder QR factorization
<https://eigen.tuxfamily.org/dox-devel/classEigen_1_1HouseholderQR.html>`_
.
If Ceres Solver has been built with an optimized LAPACK
implementation, then the user can also choose to use LAPACK's
`DGEQRF`_ routine by setting
:member:`Solver::Options::dense_linear_algebra_library_type` to
``LAPACK``. Depending on the `LAPACK` and the underlying `BLAS`
implementation this may perform better than using Eigen's Householder
QR factorization.
.. _DGEQRF: https://netlib.org/lapack/explore-html/df/dc5/group__variants_g_ecomputational_ga3766ea903391b5cf9008132f7440ec7b.html
If an NVIDIA GPU is available and Ceres Solver has been built with
CUDA support enabled, then the user can also choose to perform the
QR-decomposition on the GPU by setting
:member:`Solver::Options::dense_linear_algebra_library_type` to
``CUDA``. Depending on the GPU this can lead to a substantial
speedup. Using CUDA only makes sense for moderate to large sized
problems. This is because to perform the decomposition on the GPU the
matrix :math:`J` needs to be transferred from the CPU to the GPU and
this incurs a cost. So unless the speedup from doing the decomposition
on the GPU is large enough to also account for the time taken to
transfer the Jacobian to the GPU, using CUDA will not be better than
just doing the decomposition on the CPU.
.. _section-dense-normal-cholesky:
DENSE_NORMAL_CHOLESKY
---------------------
It is often the case that the number of rows in the Jacobian :math:`J`
are much larger than the the number of columns. The complexity of QR
factorization scales linearly with the number of rows, so beyond a
certain size it is more efficient to solve :eq:`normal` using a dense
`Cholesky factorization
<https://en.wikipedia.org/wiki/Cholesky_decomposition>`_.
Let :math:`H = R^\top R` be the Cholesky factorization of the normal
equations, where :math:`R` is an upper triangular matrix, then the
solution to :eq:`normal` is given by
.. math::
\Delta x^* = R^{-1} R^{-\top} g.
The observant reader will note that the :math:`R` in the Cholesky
factorization of :math:`H` is the same upper triangular matrix
:math:`R` in the QR factorization of :math:`J`. Since :math:`Q` is an
orthonormal matrix, :math:`J=QR` implies that :math:`J^\top J = R^\top
Q^\top Q R = R^\top R`.
Unfortunately, forming the matrix :math:`H = J'J` squares the
condition number. As a result while the cost of forming :math:`H` and
computing its Cholesky factorization is lower than computing the
QR-factorization of :math:`J`, we pay the price in terms of increased
numerical instability and potential failure of the Cholesky
factorization for ill-conditioned Jacobians.
You can use dense Cholesky factorization by setting
:member:`Solver::Options::linear_solver_type` to
``DENSE_NORMAL_CHOLESKY``.
By default (``Solver::Options::dense_linear_algebra_library_type =
EIGEN``) Ceres Solver will use `Eigen's LLT factorization`_ routine.
.. _Eigen's LLT Factorization: https://eigen.tuxfamily.org/dox/classEigen_1_1LLT.html
If Ceres Solver has been built with an optimized LAPACK
implementation, then the user can also choose to use LAPACK's
`DPOTRF`_ routine by setting
:member:`Solver::Options::dense_linear_algebra_library_type` to
``LAPACK``. Depending on the `LAPACK` and the underlying `BLAS`
implementation this may perform better than using Eigen's Cholesky
factorization.
.. _DPOTRF: https://www.netlib.org/lapack/explore-html/d1/d7a/group__double_p_ocomputational_ga2f55f604a6003d03b5cd4a0adcfb74d6.html
If an NVIDIA GPU is available and Ceres Solver has been built with
CUDA support enabled, then the user can also choose to perform the
Cholesky factorization on the GPU by setting
:member:`Solver::Options::dense_linear_algebra_library_type` to
``CUDA``. Depending on the GPU this can lead to a substantial speedup.
Using CUDA only makes sense for moderate to large sized problems. This
is because to perform the decomposition on the GPU the matrix
:math:`H` needs to be transferred from the CPU to the GPU and this
incurs a cost. So unless the speedup from doing the decomposition on
the GPU is large enough to also account for the time taken to transfer
the Jacobian to the GPU, using CUDA will not be better than just doing
the decomposition on the CPU.
.. _section-sparse-normal-cholesky:
SPARSE_NORMAL_CHOLESKY
----------------------
Large non-linear least square problems are usually sparse. In such
cases, using a dense QR or Cholesky factorization is inefficient. For
such problems, Cholesky factorization routines which treat :math:`H`
as a sparse matrix and computes a sparse factor :math:`R` are better
suited [Davis]_. This can lead to substantial savings in memory and
CPU time for large sparse problems.
You can use dense Cholesky factorization by setting
:member:`Solver::Options::linear_solver_type` to
``SPARSE_NORMAL_CHOLESKY``.
The use of this linear solver requires that Ceres is compiled with
support for at least one of:
1. `SuiteSparse <https://people.engr.tamu.edu/davis/suitesparse.html>`_ (``SUITE_SPARSE``).
2. `Apple's Accelerate framework
<https://developer.apple.com/documentation/accelerate/sparse_solvers?language=objc>`_
(``ACCELERATE_SPARSE``).
3. `Eigen's sparse linear solvers
<https://eigen.tuxfamily.org/dox/group__SparseCholesky__Module.html>`_
(``EIGEN_SPARSE``).
SuiteSparse and Accelerate offer high performance sparse Cholesky
factorization routines as they level-3 BLAS routines
internally. Eigen's sparse Cholesky routines are *simplicial* and do
not use dense linear algebra routines and as a result cannot compete
with SuiteSparse and Accelerate, especially on large problems. As a
result to get the best performance out of SuiteSparse it should be
linked to high quality BLAS and LAPACK implementations e.g. `ATLAS
<https://math-atlas.sourceforge.net/>`_, `OpenBLAS
<https://www.openblas.net/>`_ or `Intel MKL
<https://www.intel.com/content/www/us/en/developer/tools/oneapi/onemkl.html>`_.
A critical part of a sparse Cholesky factorization routine is the use
a fill-reducing ordering. By default Ceres Solver uses the Approximate
Minimum Degree (``AMD``) ordering, which usually performs well, but
there are other options that may perform better depending on the
actual sparsity structure of the Jacobian. See :ref:`section-ordering`
for more details.
.. _section-cgnr:
CGNR
----
For general sparse problems, if the problem is too large for sparse
Cholesky factorization or a sparse linear algebra library is not
linked into Ceres, another option is the ``CGNR`` solver. This solver
uses the `Conjugate Gradients
<https://en.wikipedia.org/wiki/Conjugate_gradient_method>_` method on
the *normal equations*, but without forming the normal equations
explicitly. It exploits the relation
.. math::
H x = J^\top J x = J^\top(J x)
Because ``CGNR`` never solves the linear system exactly, when the user
chooses ``CGNR`` as the linear solver, Ceres automatically switches
from the exact step algorithm to an inexact step algorithm. This also
means that ``CGNR`` can only be used with ``LEVENBERG_MARQUARDT`` and
not with ``DOGLEG`` trust region strategy.
``CGNR`` by default runs on the CPU. However, if an NVIDIA GPU is
available and Ceres Solver has been built with CUDA support enabled,
then the user can also choose to run ``CGNR`` on the GPU by setting
:member:`Solver::Options::sparse_linear_algebra_library_type` to
``CUDA_SPARSE``. The key complexity of ``CGNR`` comes from evaluating
the two sparse-matrix vector products (SpMV) :math:`Jx` and
:math:`J'y`. GPUs are particularly well suited for doing sparse
matrix-vector products. As a result, for large problems using a GPU
can lead to a substantial speedup.
The convergence of Conjugate Gradients depends on the conditioner
number :math:`\kappa(H)`. Usually :math:`H` is quite poorly
conditioned and a `Preconditioner
<https://en.wikipedia.org/wiki/Preconditioner>`_ must be used to get
reasonable performance. See section on :ref:`section-preconditioner`
for more details.
.. _section-schur:
DENSE_SCHUR & SPARSE_SCHUR
--------------------------
While it is possible to use ``SPARSE_NORMAL_CHOLESKY`` to solve bundle
adjustment problems, they have a special sparsity structure that can
be exploited to solve the normal equations more efficiently.
Suppose that the bundle adjustment problem consists of :math:`p`
cameras and :math:`q` points and the variable vector :math:`x` has the
block structure :math:`x = [y_{1}, ... ,y_{p},z_{1},
... ,z_{q}]`. Where, :math:`y` and :math:`z` correspond to camera and
point parameters respectively. Further, let the camera blocks be of
size :math:`c` and the point blocks be of size :math:`s` (for most
problems :math:`c` = :math:`6`--`9` and :math:`s = 3`). Ceres does not
impose any constancy requirement on these block sizes, but choosing
them to be constant simplifies the exposition.
The key property of bundle adjustment problems which we will exploit
is the fact that no term :math:`f_{i}` in :eq:`nonlinsq` includes two
or more point blocks at the same time. This in turn implies that the
matrix :math:`H` is of the form
.. math:: H = \left[ \begin{matrix} B & E\\ E^\top & C \end{matrix} \right]\ ,
:label: hblock
where :math:`B \in \mathbb{R}^{pc\times pc}` is a block sparse matrix
with :math:`p` blocks of size :math:`c\times c` and :math:`C \in
\mathbb{R}^{qs\times qs}` is a block diagonal matrix with :math:`q` blocks
of size :math:`s\times s`. :math:`E \in \mathbb{R}^{pc\times qs}` is a
general block sparse matrix, with a block of size :math:`c\times s`
for each observation. Let us now block partition :math:`\Delta x =
[\Delta y,\Delta z]` and :math:`g=[v,w]` to restate :eq:`normal`
as the block structured linear system
.. math:: \left[ \begin{matrix} B & E\\ E^\top & C \end{matrix}
\right]\left[ \begin{matrix} \Delta y \\ \Delta z
\end{matrix} \right] = \left[ \begin{matrix} v\\ w
\end{matrix} \right]\ ,
:label: linear2
and apply Gaussian elimination to it. As we noted above, :math:`C` is
a block diagonal matrix, with small diagonal blocks of size
:math:`s\times s`. Thus, calculating the inverse of :math:`C` by
inverting each of these blocks is cheap. This allows us to eliminate
:math:`\Delta z` by observing that :math:`\Delta z = C^{-1}(w - E^\top
\Delta y)`, giving us
.. math:: \left[B - EC^{-1}E^\top\right] \Delta y = v - EC^{-1}w\ .
:label: schur
The matrix
.. math:: S = B - EC^{-1}E^\top
is the Schur complement of :math:`C` in :math:`H`. It is also known as
the *reduced camera matrix*, because the only variables
participating in :eq:`schur` are the ones corresponding to the
cameras. :math:`S \in \mathbb{R}^{pc\times pc}` is a block structured
symmetric positive definite matrix, with blocks of size :math:`c\times
c`. The block :math:`S_{ij}` corresponding to the pair of images
:math:`i` and :math:`j` is non-zero if and only if the two images
observe at least one common point.
Now :eq:`linear2` can be solved by first forming :math:`S`, solving
for :math:`\Delta y`, and then back-substituting :math:`\Delta y` to
obtain the value of :math:`\Delta z`. Thus, the solution of what was
an :math:`n\times n`, :math:`n=pc+qs` linear system is reduced to the
inversion of the block diagonal matrix :math:`C`, a few matrix-matrix
and matrix-vector multiplies, and the solution of block sparse
:math:`pc\times pc` linear system :eq:`schur`. For almost all
problems, the number of cameras is much smaller than the number of
points, :math:`p \ll q`, thus solving :eq:`schur` is significantly
cheaper than solving :eq:`linear2`. This is the *Schur complement
trick* [Brown]_.
This still leaves open the question of solving :eq:`schur`. As we
discussed when considering the exact solution of the normal equations
using Cholesky factorization, we have two options.
1. ``DENSE_SCHUR`` - The first is **dense Cholesky factorization**,
where we store and factor :math:`S` as a dense matrix. This method has
:math:`O(p^2)` space complexity and :math:`O(p^3)` time complexity and
is only practical for problems with up to a few hundred cameras.
2. ``SPARSE_SCHUR`` - For large bundle adjustment problems :math:`S`
is typically a fairly sparse matrix, as most images only see a small
fraction of the scene. This leads us to the second option: **sparse
Cholesky factorization** [Davis]_. Here we store :math:`S` as a
sparse matrix, use row and column re-ordering algorithms to maximize
the sparsity of the Cholesky decomposition, and focus their compute
effort on the non-zero part of the factorization [Davis]_ [Chen]_
. Sparse direct methods, depending on the exact sparsity structure of
the Schur complement, allow bundle adjustment algorithms to scenes
with thousands of cameras.
.. _section-iterative_schur:
ITERATIVE_SCHUR
---------------
Another option for bundle adjustment problems is to apply Conjugate
Gradients to the reduced camera matrix :math:`S` instead of
:math:`H`. One reason to do this is that :math:`S` is a much smaller
matrix than :math:`H`, but more importantly, it can be shown that
:math:`\kappa(S)\leq \kappa(H)` [Agarwal]_.
Ceres implements Conjugate Gradients on :math:`S` as the
``ITERATIVE_SCHUR`` solver. When the user chooses ``ITERATIVE_SCHUR``
as the linear solver, Ceres automatically switches from the exact step
algorithm to an inexact step algorithm.
The key computational operation when using Conjuagate Gradients is the
evaluation of the matrix vector product :math:`Sx` for an arbitrary
vector :math:`x`. Because PCG only needs access to :math:`S` via its
product with a vector, one way to evaluate :math:`Sx` is to observe
that
.. math:: x_1 &= E^\top x\\
x_2 &= C^{-1} x_1\\
x_3 &= Ex_2\\
x_4 &= Bx\\
Sx &= x_4 - x_3
:label: schurtrick1
Thus, we can run Conjugate Gradients on :math:`S` with the same
computational effort per iteration as Conjugate Gradients on
:math:`H`, while reaping the benefits of a more powerful
preconditioner. In fact, we do not even need to compute :math:`H`,
:eq:`schurtrick1` can be implemented using just the columns of
:math:`J`.
Equation :eq:`schurtrick1` is closely related to *Domain Decomposition
methods* for solving large linear systems that arise in structural
engineering and partial differential equations. In the language of
Domain Decomposition, each point in a bundle adjustment problem is a
domain, and the cameras form the interface between these domains. The
iterative solution of the Schur complement then falls within the
sub-category of techniques known as Iterative Sub-structuring [Saad]_
[Mathew]_.
While in most cases the above method for evaluating :math:`Sx` is the
way to go, for some problems it is better to compute the Schur
complemenent :math:`S` explicitly and then run Conjugate Gradients on
it. This can be done by settin
``Solver::Options::use_explicit_schur_complement`` to ``true``. This
option can only be used with the ``SCHUR_JACOBI`` preconditioner.
.. _section-schur_power_series_expansion:
SCHUR_POWER_SERIES_EXPANSION
----------------------------
It can be shown that the inverse of the Schur complement can be
written as an infinite power-series [Weber]_ [Zheng]_:
.. math:: S &= B - EC^{-1}E^\top\\
&= B(I - B^{-1}EC^{-1}E^\top)\\
S^{-1} &= (I - B^{-1}EC^{-1}E^\top)^{-1} B^{-1}\\
& = \sum_{i=0}^\infty \left(B^{-1}EC^{-1}E^\top\right)^{i} B^{-1}
As a result a truncated version of this power series expansion can be
used to approximate the inverse and therefore the solution to
:eq:`schur`. Ceres allows the user to use Schur power series expansion
in three ways.
1. As a linear solver. This is what [Weber]_ calls **Power Bundle
Adjustment** and corresponds to using the truncated power series to
approximate the inverse of the Schur complement. This is done by
setting the following options.
.. code-block:: c++
Solver::Options::linear_solver_type = ITERATIVE_SCHUR
Solver::Options::preconditioner_type = IDENTITY
Solver::Options::use_spse_initialization = true
Solver::Options::max_linear_solver_iterations = 0;
// The following two settings are worth tuning for your application.
Solver::Options::max_num_spse_iterations = 5;
Solver::Options::spse_tolerance = 0.1;
2. As a preconditioner for ``ITERATIVE_SCHUR``. Any method for
approximating the inverse of a matrix can also be used as a
preconditioner. This is enabled by setting the following options.
.. code-block:: c++
Solver::Options::linear_solver_type = ITERATIVE_SCHUR
Solver::Options::preconditioner_type = SCHUR_POWER_SERIES_EXPANSION;
Solver::Options::use_spse_initialization = false;
// This is worth tuning for your application.
Solver::Options::max_num_spse_iterations = 5;
3. As initialization for ``ITERATIIVE_SCHUR`` with any
preconditioner. This is a combination of the above two, where the
Schur Power Series Expansion
.. code-block:: c++
Solver::Options::linear_solver_type = ITERATIVE_SCHUR
Solver::Options::preconditioner_type = ... // Preconditioner of your choice.
Solver::Options::use_spse_initialization = true
Solver::Options::max_linear_solver_iterations = 0;
// The following two settings are worth tuning for your application.
Solver::Options::max_num_spse_iterations = 5;
// This only affects the initialization but not the preconditioner.
Solver::Options::spse_tolerance = 0.1;
.. _section-mixed-precision:
Mixed Precision Solves
======================
Generally speaking Ceres Solver does all its arithmetic in double
precision. Sometimes though, one can use single precision arithmetic
to get substantial speedups. Currently, for linear solvers that
perform Cholesky factorization (sparse or dense) the user has the
option cast the linear system to single precision and then use
single precision Cholesky factorization routines to solve the
resulting linear system. This can be enabled by setting
:member:`Solver::Options::use_mixed_precision_solves` to ``true``.
Depending on the conditioning of the problem, the use of single
precision factorization may lead to some loss of accuracy. Some of
this accuracy can be recovered by performing `Iterative Refinement
<https://en.wikipedia.org/wiki/Iterative_refinement>`_. The number of
iterations of iterative refinement are controlled by
:member:`Solver::Options::max_num_refinement_iterations`. The default
value of this parameter is zero, which means if
:member:`Solver::Options::use_mixed_precision_solves` is ``true``,
then no iterative refinement is performed. Usually 2-3 refinement
iterations are enough.
Mixed precision solves are available in the following linear solver
configurations:
1. ``DENSE_NORMAL_CHOLESKY`` + ``EIGEN``/ ``LAPACK`` / ``CUDA``.
2. ``DENSE_SCHUR`` + ``EIGEN``/ ``LAPACK`` / ``CUDA``.
3. ``SPARSE_NORMAL_CHOLESKY`` + ``EIGEN_SPARSE`` / ``ACCELERATE_SPARSE``
4. ``SPARSE_SCHUR`` + ``EIGEN_SPARSE`` / ``ACCELERATE_SPARSE``
Mixed precision solves area not available when using ``SUITE_SPARSE``
as the sparse linear algebra backend because SuiteSparse/CHOLMOD does
not support single precision solves.
.. _section-preconditioner:
Preconditioners
===============
The convergence rate of Conjugate Gradients for solving :eq:`normal`
depends on the distribution of eigenvalues of :math:`H` [Saad]_. A
useful upper bound is :math:`\sqrt{\kappa(H)}`, where,
:math:`\kappa(H)` is the condition number of the matrix :math:`H`. For
most non-linear least squares problems, :math:`\kappa(H)` is high and
a direct application of Conjugate Gradients to :eq:`normal` results in
extremely poor performance.
The solution to this problem is to replace :eq:`normal` with a
*preconditioned* system. Given a linear system, :math:`Ax =b` and a
preconditioner :math:`M` the preconditioned system is given by
:math:`M^{-1}Ax = M^{-1}b`. The resulting algorithm is known as
Preconditioned Conjugate Gradients algorithm (PCG) and its worst case
complexity now depends on the condition number of the *preconditioned*
matrix :math:`\kappa(M^{-1}A)`.
The computational cost of using a preconditioner :math:`M` is the cost
of computing :math:`M` and evaluating the product :math:`M^{-1}y` for
arbitrary vectors :math:`y`. Thus, there are two competing factors to
consider: How much of :math:`H`'s structure is captured by :math:`M`
so that the condition number :math:`\kappa(HM^{-1})` is low, and the
computational cost of constructing and using :math:`M`. The ideal
preconditioner would be one for which :math:`\kappa(M^{-1}A)
=1`. :math:`M=A` achieves this, but it is not a practical choice, as
applying this preconditioner would require solving a linear system
equivalent to the unpreconditioned problem. It is usually the case
that the more information :math:`M` has about :math:`H`, the more
expensive it is use. For example, Incomplete Cholesky factorization
based preconditioners have much better convergence behavior than the
Jacobi preconditioner, but are also much more expensive.
For a survey of the state of the art in preconditioning linear least
squares problems with general sparsity structure see [GouldScott]_.
Ceres Solver comes with an number of preconditioners suited for
problems with general sparsity as well as the special sparsity
structure encountered in bundle adjustment problems.
IDENTITY
--------
This is equivalent to using an identity matrix as a preconditioner,
i.e. no preconditioner at all.
JACOBI
------
The simplest of all preconditioners is the diagonal or Jacobi
preconditioner, i.e., :math:`M=\operatorname{diag}(A)`, which for
block structured matrices like :math:`H` can be generalized to the
block Jacobi preconditioner. The ``JACOBI`` preconditioner in Ceres
when used with :ref:`section-cgnr` refers to the block diagonal of
:math:`H` and when used with :ref:`section-iterative_schur` refers to
the block diagonal of :math:`B` [Mandel]_.
For detailed performance data about the performance of ``JACOBI`` on
bundle adjustment problems see [Agarwal]_.
SCHUR_JACOBI
------------
Another obvious choice for :ref:`section-iterative_schur` is the block
diagonal of the Schur complement matrix :math:`S`, i.e, the block
Jacobi preconditioner for :math:`S`. In Ceres we refer to it as the
``SCHUR_JACOBI`` preconditioner.
For detailed performance data about the performance of
``SCHUR_JACOBI`` on bundle adjustment problems see [Agarwal]_.
CLUSTER_JACOBI and CLUSTER_TRIDIAGONAL
--------------------------------------
For bundle adjustment problems arising in reconstruction from
community photo collections, more effective preconditioners can be
constructed by analyzing and exploiting the camera-point visibility
structure of the scene.
The key idea is to cluster the cameras based on the visibility
structure of the scene. The similarity between a pair of cameras
:math:`i` and :math:`j` is given by:
.. math:: S_{ij} = \frac{|V_i \cap V_j|}{|V_i| |V_j|}
Here :math:`V_i` is the set of scene points visible in camera
:math:`i`. This idea was first exploited by [KushalAgarwal]_ to create
the ``CLUSTER_JACOBI`` and the ``CLUSTER_TRIDIAGONAL`` preconditioners
which Ceres implements.
The performance of these two preconditioners depends on the speed and
clustering quality of the clustering algorithm used when building the
preconditioner. In the original paper, [KushalAgarwal]_ used the
Canonical Views algorithm [Simon]_, which while producing high quality
clusterings can be quite expensive for large graphs. So, Ceres
supports two visibility clustering algorithms - ``CANONICAL_VIEWS``
and ``SINGLE_LINKAGE``. The former is as the name implies Canonical
Views algorithm of [Simon]_. The latter is the the classic `Single
Linkage Clustering
<https://en.wikipedia.org/wiki/Single-linkage_clustering>`_
algorithm. The choice of clustering algorithm is controlled by
:member:`Solver::Options::visibility_clustering_type`.
SCHUR_POWER_SERIES_EXPANSION
----------------------------
As explained in :ref:`section-schur_power_series_expansion`, the Schur
complement matrix admits a power series expansion and a truncated
version of this power series can be used as a preconditioner for
``ITERATIVE_SCHUR``. When used as a preconditioner
:member:`Solver::Options::max_num_spse_iterations` controls the number
of terms in the power series that are used.
SUBSET
------
This is a preconditioner for problems with general sparsity. Given a
subset of residual blocks of a problem, it uses the corresponding
subset of the rows of the Jacobian to construct a preconditioner
[Dellaert]_.
Suppose the Jacobian :math:`J` has been horizontally partitioned as
.. math:: J = \begin{bmatrix} P \\ Q \end{bmatrix}
Where, :math:`Q` is the set of rows corresponding to the residual
blocks in
:member:`Solver::Options::residual_blocks_for_subset_preconditioner`. The
preconditioner is the matrix :math:`(Q^\top Q)^{-1}`.
The efficacy of the preconditioner depends on how well the matrix
:math:`Q` approximates :math:`J^\top J`, or how well the chosen
residual blocks approximate the full problem.
This preconditioner is NOT available when running ``CGNR`` using
``CUDA``.
.. _section-ordering:
Ordering
========
The order in which variables are eliminated in a linear solver can
have a significant of impact on the efficiency and accuracy of the
method. For example when doing sparse Cholesky factorization, there
are matrices for which a good ordering will give a Cholesky factor
with :math:`O(n)` storage, whereas a bad ordering will result in an
completely dense factor.
Ceres allows the user to provide varying amounts of hints to the
solver about the variable elimination ordering to use. This can range
from no hints, where the solver is free to decide the best possible
ordering based on the user's choices like the linear solver being
used, to an exact order in which the variables should be eliminated,
and a variety of possibilities in between.
The simplest thing to do is to just set
:member:`Solver::Options::linear_solver_ordering_type` to ``AMD``
(default) or ``NESDIS`` based on your understanding of the problem or
empirical testing.
More information can be commmuniucated by using an instance
:class:`ParameterBlockOrdering` class.
Formally an ordering is an ordered partitioning of the
parameter blocks, i.e, each parameter block belongs to exactly
one group, and each group has a unique non-negative integer
associated with it, that determines its order in the set of
groups.
e.g. Consider the linear system
.. math::
x + y &= 3 \\
2x + 3y &= 7
There are two ways in which it can be solved. First eliminating
:math:`x` from the two equations, solving for :math:`y` and then back
substituting for :math:`x`, or first eliminating :math:`y`, solving
for :math:`x` and back substituting for :math:`y`. The user can
construct three orderings here.
1. :math:`\{0: x\}, \{1: y\}` - eliminate :math:`x` first.
2. :math:`\{0: y\}, \{1: x\}` - eliminate :math:`y` first.
3. :math:`\{0: x, y\}` - Solver gets to decide the elimination order.
Thus, to have Ceres determine the ordering automatically, put all the
variables in group 0 and to control the ordering for every variable,
create groups :math:`0 \dots N-1`, one per variable, in the desired
order.
``linear_solver_ordering == nullptr`` and an ordering where all the
parameter blocks are in one elimination group mean the same thing -
the solver is free to choose what it thinks is the best elimination
ordering using the ordering algorithm (specified using
:member:`Solver::Options::linear_solver_ordering_type`). Therefore in
the following we will only consider the case where
``linear_solver_ordering != nullptr``.
The exact interpretation of the ``linear_solver_ordering`` depends on
the values of :member:`Solver::Options::linear_solver_ordering_type`,
:member:`Solver::Options::linear_solver_type`,
:member:`Solver::Options::preconditioner_type` and
:member:`Solver::Options::sparse_linear_algebra_library_type` as we will
explain below.
Bundle Adjustment
-----------------
If the user is using one of the Schur solvers (``DENSE_SCHUR``,
``SPARSE_SCHUR``, ``ITERATIVE_SCHUR``) and chooses to specify an
ordering, it must have one important property. The lowest numbered
elimination group must form an independent set in the graph
corresponding to the Hessian, or in other words, no two parameter
blocks in the first elimination group should co-occur in the same
residual block. For the best performance, this elimination group
should be as large as possible. For standard bundle adjustment
problems, this corresponds to the first elimination group containing
all the 3d points, and the second containing the parameter blocks for
all the cameras.
If the user leaves the choice to Ceres, then the solver uses an
approximate maximum independent set algorithm to identify the first
elimination group [LiSaad]_.
``sparse_linear_algebra_library_type = SUITE_SPARSE``
-----------------------------------------------------
**linear_solver_ordering_type = AMD**
A constrained Approximate Minimum Degree (CAMD) ordering is used where
the parameter blocks in the lowest numbered group are eliminated
first, and then the parameter blocks in the next lowest numbered group
and so on. Within each group, CAMD is free to order the parameter blocks
as it chooses.
**linear_solver_ordering_type = NESDIS**
a. ``linear_solver_type = SPARSE_NORMAL_CHOLESKY`` or
``linear_solver_type = CGNR`` and ``preconditioner_type = SUBSET``
The value of ``linear_solver_ordering`` is ignored and a Nested
Dissection algorithm is used to compute a fill reducing ordering.
b. ``linear_solver_type = SPARSE_SCHUR/DENSE_SCHUR/ITERATIVE_SCHUR``
ONLY the lowest group are used to compute the Schur complement, and
Nested Dissection is used to compute a fill reducing ordering for
the Schur Complement (or its preconditioner).
``sparse_linear_algebra_library_type = EIGEN_SPARSE/ACCELERATE_SPARSE``
-----------------------------------------------------------------------
a. ``linear_solver_type = SPARSE_NORMAL_CHOLESKY`` or
``linear_solver_type = CGNR`` and ``preconditioner_type = SUBSET``
The value of ``linear_solver_ordering`` is ignored and ``AMD`` or
``NESDIS`` is used to compute a fill reducing ordering as requested
by the user.
b. ``linear_solver_type = SPARSE_SCHUR/DENSE_SCHUR/ITERATIVE_SCHUR``
ONLY the lowest group are used to compute the Schur complement, and
``AMD`` or ``NESID`` is used to compute a fill reducing ordering
for the Schur Complement (or its preconditioner) as requested by
the user.
.. _section-solver-options:
:class:`Solver::Options`
========================
.. class:: Solver::Options
:class:`Solver::Options` controls the overall behavior of the
solver. We list the various settings and their default values below.
.. function:: bool Solver::Options::IsValid(std::string* error) const
Validate the values in the options struct and returns true on
success. If there is a problem, the method returns false with
``error`` containing a textual description of the cause.
.. member:: MinimizerType Solver::Options::minimizer_type
Default: ``TRUST_REGION``
Choose between ``LINE_SEARCH`` and ``TRUST_REGION`` algorithms. See
:ref:`section-trust-region-methods` and
:ref:`section-line-search-methods` for more details.
.. member:: LineSearchDirectionType Solver::Options::line_search_direction_type
Default: ``LBFGS``
Choices are ``STEEPEST_DESCENT``, ``NONLINEAR_CONJUGATE_GRADIENT``,
``BFGS`` and ``LBFGS``.
See :ref:`section-line-search-methods` for more details.
.. member:: LineSearchType Solver::Options::line_search_type
Default: ``WOLFE``
Choices are ``ARMIJO`` and ``WOLFE`` (strong Wolfe conditions).
Note that in order for the assumptions underlying the ``BFGS`` and
``LBFGS`` line search direction algorithms to be satisfied, the
``WOLFE`` line search must be used.
See :ref:`section-line-search-methods` for more details.
.. member:: NonlinearConjugateGradientType Solver::Options::nonlinear_conjugate_gradient_type
Default: ``FLETCHER_REEVES``
Choices are ``FLETCHER_REEVES``, ``POLAK_RIBIERE`` and
``HESTENES_STIEFEL``.
.. member:: int Solver::Options::max_lbfgs_rank
Default: ``20``
The LBFGS hessian approximation is a low rank approximation to
the inverse of the Hessian matrix. The rank of the
approximation determines (linearly) the space and time
complexity of using the approximation. Higher the rank, the
better is the quality of the approximation. The increase in
quality is however is bounded for a number of reasons.
1. The method only uses secant information and not actual
derivatives.
2. The Hessian approximation is constrained to be positive
definite.
So increasing this rank to a large number will cost time and
space complexity without the corresponding increase in solution
quality. There are no hard and fast rules for choosing the
maximum rank. The best choice usually requires some problem
specific experimentation.
For more theoretical and implementation details of the LBFGS
method, please see [Nocedal]_.
.. member:: bool Solver::Options::use_approximate_eigenvalue_bfgs_scaling
Default: ``false``
As part of the ``BFGS`` update step / ``LBFGS`` right-multiply
step, the initial inverse Hessian approximation is taken to be the
Identity. However, [Oren]_ showed that using instead :math:`I *
\gamma`, where :math:`\gamma` is a scalar chosen to approximate an
eigenvalue of the true inverse Hessian can result in improved
convergence in a wide variety of cases. Setting
``use_approximate_eigenvalue_bfgs_scaling`` to true enables this
scaling in ``BFGS`` (before first iteration) and ``LBFGS`` (at each
iteration).
Precisely, approximate eigenvalue scaling equates to
.. math:: \gamma = \frac{y_k' s_k}{y_k' y_k}
With:
.. math:: y_k = \nabla f_{k+1} - \nabla f_k
.. math:: s_k = x_{k+1} - x_k
Where :math:`f()` is the line search objective and :math:`x` the
vector of parameter values [NocedalWright]_.
It is important to note that approximate eigenvalue scaling does
**not** *always* improve convergence, and that it can in fact
*significantly* degrade performance for certain classes of problem,
which is why it is disabled by default. In particular it can
degrade performance when the sensitivity of the problem to different
parameters varies significantly, as in this case a single scalar
factor fails to capture this variation and detrimentally downscales
parts of the Jacobian approximation which correspond to
low-sensitivity parameters. It can also reduce the robustness of the
solution to errors in the Jacobians.
.. member:: LineSearchIterpolationType Solver::Options::line_search_interpolation_type
Default: ``CUBIC``
Degree of the polynomial used to approximate the objective
function. Valid values are ``BISECTION``, ``QUADRATIC`` and
``CUBIC``.
.. member:: double Solver::Options::min_line_search_step_size
Default: ``1e-9``
The line search terminates if:
.. math:: \|\Delta x_k\|_\infty < \text{min_line_search_step_size}
where :math:`\|\cdot\|_\infty` refers to the max norm, and
:math:`\Delta x_k` is the step change in the parameter values at
the :math:`k`-th iteration.
.. member:: double Solver::Options::line_search_sufficient_function_decrease
Default: ``1e-4``
Solving the line search problem exactly is computationally
prohibitive. Fortunately, line search based optimization algorithms
can still guarantee convergence if instead of an exact solution,
the line search algorithm returns a solution which decreases the
value of the objective function sufficiently. More precisely, we
are looking for a step size s.t.
.. math:: f(\text{step_size}) \le f(0) + \text{sufficient_decrease} * [f'(0) * \text{step_size}]
This condition is known as the Armijo condition.
.. member:: double Solver::Options::max_line_search_step_contraction
Default: ``1e-3``
In each iteration of the line search,
.. math:: \text{new_step_size} >= \text{max_line_search_step_contraction} * \text{step_size}
Note that by definition, for contraction:
.. math:: 0 < \text{max_step_contraction} < \text{min_step_contraction} < 1
.. member:: double Solver::Options::min_line_search_step_contraction
Default: ``0.6``
In each iteration of the line search,
.. math:: \text{new_step_size} <= \text{min_line_search_step_contraction} * \text{step_size}
Note that by definition, for contraction:
.. math:: 0 < \text{max_step_contraction} < \text{min_step_contraction} < 1
.. member:: int Solver::Options::max_num_line_search_step_size_iterations
Default: ``20``
Maximum number of trial step size iterations during each line
search, if a step size satisfying the search conditions cannot be
found within this number of trials, the line search will stop.
The minimum allowed value is 0 for trust region minimizer and 1
otherwise. If 0 is specified for the trust region minimizer, then
line search will not be used when solving constrained optimization
problems.
As this is an 'artificial' constraint (one imposed by the user, not
the underlying math), if ``WOLFE`` line search is being used, *and*
points satisfying the Armijo sufficient (function) decrease
condition have been found during the current search (in :math:`<=`
``max_num_line_search_step_size_iterations``). Then, the step size
with the lowest function value which satisfies the Armijo condition
will be returned as the new valid step, even though it does *not*
satisfy the strong Wolfe conditions. This behaviour protects
against early termination of the optimizer at a sub-optimal point.
.. member:: int Solver::Options::max_num_line_search_direction_restarts
Default: ``5``
Maximum number of restarts of the line search direction algorithm
before terminating the optimization. Restarts of the line search
direction algorithm occur when the current algorithm fails to
produce a new descent direction. This typically indicates a
numerical failure, or a breakdown in the validity of the
approximations used.
.. member:: double Solver::Options::line_search_sufficient_curvature_decrease
Default: ``0.9``
The strong Wolfe conditions consist of the Armijo sufficient
decrease condition, and an additional requirement that the
step size be chosen s.t. the *magnitude* ('strong' Wolfe
conditions) of the gradient along the search direction
decreases sufficiently. Precisely, this second condition
is that we seek a step size s.t.
.. math:: \|f'(\text{step_size})\| <= \text{sufficient_curvature_decrease} * \|f'(0)\|
Where :math:`f()` is the line search objective and :math:`f'()` is the derivative
of :math:`f` with respect to the step size: :math:`\frac{d f}{d~\text{step size}}`.
.. member:: double Solver::Options::max_line_search_step_expansion
Default: ``10.0``
During the bracketing phase of a Wolfe line search, the step size
is increased until either a point satisfying the Wolfe conditions
is found, or an upper bound for a bracket containing a point
satisfying the conditions is found. Precisely, at each iteration
of the expansion:
.. math:: \text{new_step_size} <= \text{max_step_expansion} * \text{step_size}
By definition for expansion
.. math:: \text{max_step_expansion} > 1.0
.. member:: TrustRegionStrategyType Solver::Options::trust_region_strategy_type
Default: ``LEVENBERG_MARQUARDT``
The trust region step computation algorithm used by
Ceres. Currently ``LEVENBERG_MARQUARDT`` and ``DOGLEG`` are the two
valid choices. See :ref:`section-levenberg-marquardt` and
:ref:`section-dogleg` for more details.
.. member:: DoglegType Solver::Options::dogleg_type
Default: ``TRADITIONAL_DOGLEG``
Ceres supports two different dogleg strategies.
``TRADITIONAL_DOGLEG`` method by Powell and the ``SUBSPACE_DOGLEG``
method described by [ByrdSchnabel]_ . See :ref:`section-dogleg`
for more details.
.. member:: bool Solver::Options::use_nonmonotonic_steps
Default: ``false``
Relax the requirement that the trust-region algorithm take strictly
decreasing steps. See :ref:`section-non-monotonic-steps` for more
details.
.. member:: int Solver::Options::max_consecutive_nonmonotonic_steps
Default: ``5``
The window size used by the step selection algorithm to accept
non-monotonic steps.
.. member:: int Solver::Options::max_num_iterations
Default: ``50``
Maximum number of iterations for which the solver should run.
.. member:: double Solver::Options::max_solver_time_in_seconds
Default: ``1e9``
Maximum amount of time for which the solver should run.
.. member:: int Solver::Options::num_threads
Default: ``1``
Number of threads used by Ceres to evaluate the Jacobian.
.. member:: double Solver::Options::initial_trust_region_radius
Default: ``1e4``
The size of the initial trust region. When the
``LEVENBERG_MARQUARDT`` strategy is used, the reciprocal of this
number is the initial regularization parameter.
.. member:: double Solver::Options::max_trust_region_radius
Default: ``1e16``
The trust region radius is not allowed to grow beyond this value.
.. member:: double Solver::Options::min_trust_region_radius
Default: ``1e-32``
The solver terminates, when the trust region becomes smaller than
this value.
.. member:: double Solver::Options::min_relative_decrease
Default: ``1e-3``
Lower threshold for relative decrease before a trust-region step is
accepted.
.. member:: double Solver::Options::min_lm_diagonal
Default: ``1e-6``
The ``LEVENBERG_MARQUARDT`` strategy, uses a diagonal matrix to
regularize the trust region step. This is the lower bound on
the values of this diagonal matrix.
.. member:: double Solver::Options::max_lm_diagonal
Default: ``1e32``
The ``LEVENBERG_MARQUARDT`` strategy, uses a diagonal matrix to
regularize the trust region step. This is the upper bound on
the values of this diagonal matrix.
.. member:: int Solver::Options::max_num_consecutive_invalid_steps
Default: ``5``
The step returned by a trust region strategy can sometimes be
numerically invalid, usually because of conditioning
issues. Instead of crashing or stopping the optimization, the
optimizer can go ahead and try solving with a smaller trust
region/better conditioned problem. This parameter sets the number
of consecutive retries before the minimizer gives up.
.. member:: double Solver::Options::function_tolerance
Default: ``1e-6``
Solver terminates if
.. math:: \frac{|\Delta \text{cost}|}{\text{cost}} <= \text{function_tolerance}
where, :math:`\Delta \text{cost}` is the change in objective
function value (up or down) in the current iteration of
Levenberg-Marquardt.
.. member:: double Solver::Options::gradient_tolerance
Default: ``1e-10``
Solver terminates if
.. math:: \|x - \Pi \boxplus(x, -g(x))\|_\infty <= \text{gradient_tolerance}
where :math:`\|\cdot\|_\infty` refers to the max norm, :math:`\Pi`
is projection onto the bounds constraints and :math:`\boxplus` is
Plus operation for the overall manifold associated with the
parameter vector.
.. member:: double Solver::Options::parameter_tolerance
Default: ``1e-8``
Solver terminates if
.. math:: \|\Delta x\| <= (\|x\| + \text{parameter_tolerance}) * \text{parameter_tolerance}
where :math:`\Delta x` is the step computed by the linear solver in
the current iteration.
.. member:: LinearSolverType Solver::Options::linear_solver_type
Default: ``SPARSE_NORMAL_CHOLESKY`` / ``DENSE_QR``
Type of linear solver used to compute the solution to the linear
least squares problem in each iteration of the Levenberg-Marquardt
algorithm. If Ceres is built with support for ``SuiteSparse`` or
``Accelerate`` or ``Eigen``'s sparse Cholesky factorization, the
default is ``SPARSE_NORMAL_CHOLESKY``, it is ``DENSE_QR``
otherwise.
.. member:: PreconditionerType Solver::Options::preconditioner_type
Default: ``JACOBI``
The preconditioner used by the iterative linear solver. The default
is the block Jacobi preconditioner. Valid values are (in increasing
order of complexity) ``IDENTITY``, ``JACOBI``, ``SCHUR_JACOBI``,
``CLUSTER_JACOBI``, ``CLUSTER_TRIDIAGONAL``, ``SUBSET`` and
``SCHUR_POWER_SERIES_EXPANSION``. See :ref:`section-preconditioner`
for more details.
.. member:: VisibilityClusteringType Solver::Options::visibility_clustering_type
Default: ``CANONICAL_VIEWS``
Type of clustering algorithm to use when constructing a visibility
based preconditioner. The original visibility based preconditioning
paper and implementation only used the canonical views algorithm.
This algorithm gives high quality results but for large dense
graphs can be particularly expensive. As its worst case complexity
is cubic in size of the graph.
Another option is to use ``SINGLE_LINKAGE`` which is a simple
thresholded single linkage clustering algorithm that only pays
attention to tightly coupled blocks in the Schur complement. This
is a fast algorithm that works well.
The optimal choice of the clustering algorithm depends on the
sparsity structure of the problem, but generally speaking we
recommend that you try ``CANONICAL_VIEWS`` first and if it is too
expensive try ``SINGLE_LINKAGE``.
.. member:: std::unordered_set<ResidualBlockId> Solver::Options::residual_blocks_for_subset_preconditioner
``SUBSET`` preconditioner is a preconditioner for problems with
general sparsity. Given a subset of residual blocks of a problem,
it uses the corresponding subset of the rows of the Jacobian to
construct a preconditioner.
Suppose the Jacobian :math:`J` has been horizontally partitioned as
.. math:: J = \begin{bmatrix} P \\ Q \end{bmatrix}
Where, :math:`Q` is the set of rows corresponding to the residual
blocks in
:member:`Solver::Options::residual_blocks_for_subset_preconditioner`. The
preconditioner is the matrix :math:`(Q^\top Q)^{-1}`.
The efficacy of the preconditioner depends on how well the matrix
:math:`Q` approximates :math:`J^\top J`, or how well the chosen
residual blocks approximate the full problem.
If ``Solver::Options::preconditioner_type == SUBSET``, then
``residual_blocks_for_subset_preconditioner`` must be non-empty.
.. member:: DenseLinearAlgebraLibrary Solver::Options::dense_linear_algebra_library_type
Default: ``EIGEN``
Ceres supports using multiple dense linear algebra libraries for
dense matrix factorizations. Currently ``EIGEN``, ``LAPACK`` and
``CUDA`` are the valid choices. ``EIGEN`` is always available,
``LAPACK`` refers to the system ``BLAS + LAPACK`` library which may
or may not be available. ``CUDA`` refers to Nvidia's GPU based
dense linear algebra library which may or may not be available.
This setting affects the ``DENSE_QR``, ``DENSE_NORMAL_CHOLESKY``
and ``DENSE_SCHUR`` solvers. For small to moderate sized problem
``EIGEN`` is a fine choice but for large problems, an optimized
``LAPACK + BLAS`` or ``CUDA`` implementation can make a substantial
difference in performance.
.. member:: SparseLinearAlgebraLibrary Solver::Options::sparse_linear_algebra_library_type
Default: The highest available according to: ``SUITE_SPARSE`` >
``ACCELERATE_SPARSE`` > ``EIGEN_SPARSE`` > ``NO_SPARSE``
Ceres supports the use of three sparse linear algebra libraries,
``SuiteSparse``, which is enabled by setting this parameter to
``SUITE_SPARSE``, ``Acclerate``, which can be selected by setting
this parameter to ``ACCELERATE_SPARSE`` and ``Eigen`` which is
enabled by setting this parameter to ``EIGEN_SPARSE``. Lastly,
``NO_SPARSE`` means that no sparse linear solver should be used;
note that this is irrespective of whether Ceres was compiled with
support for one.
``SuiteSparse`` is a sophisticated sparse linear algebra library
and should be used in general. On MacOS you may want to use the
``Accelerate`` framework.
If your needs/platforms prevent you from using ``SuiteSparse``,
consider using the sparse linear algebra routines in ``Eigen``. The
sparse Cholesky algorithms currently included with ``Eigen`` are
not as sophisticated as the ones in ``SuiteSparse`` and
``Accelerate`` and as a result its performance is considerably
worse.
.. member:: LinearSolverOrderingType Solver::Options::linear_solver_ordering_type
Default: ``AMD``
The order in which variables are eliminated in a linear solver can
have a significant impact on the efficiency and accuracy of the
method. e.g., when doing sparse Cholesky factorization, there are
matrices for which a good ordering will give a Cholesky factor
with :math:`O(n)` storage, where as a bad ordering will result in
an completely dense factor.
Sparse direct solvers like ``SPARSE_NORMAL_CHOLESKY`` and
``SPARSE_SCHUR`` use a fill reducing ordering of the columns and
rows of the matrix being factorized before computing the numeric
factorization.
This enum controls the type of algorithm used to compute this fill
reducing ordering. There is no single algorithm that works on all
matrices, so determining which algorithm works better is a matter
of empirical experimentation.
.. member:: std::shared_ptr<ParameterBlockOrdering> Solver::Options::linear_solver_ordering
Default: ``nullptr``
An instance of the ordering object informs the solver about the
desired order in which parameter blocks should be eliminated by the
linear solvers.
If ``nullptr``, the solver is free to choose an ordering that it
thinks is best.
See :ref:`section-ordering` for more details.
.. member:: bool Solver::Options::use_explicit_schur_complement
Default: ``false``
Use an explicitly computed Schur complement matrix with
``ITERATIVE_SCHUR``.
By default this option is disabled and ``ITERATIVE_SCHUR``
evaluates evaluates matrix-vector products between the Schur
complement and a vector implicitly by exploiting the algebraic
expression for the Schur complement.
The cost of this evaluation scales with the number of non-zeros in
the Jacobian.
For small to medium sized problems there is a sweet spot where
computing the Schur complement is cheap enough that it is much more
efficient to explicitly compute it and use it for evaluating the
matrix-vector products.
.. NOTE::
This option can only be used with the ``SCHUR_JACOBI``
preconditioner.
.. member:: bool Solver::Options::dynamic_sparsity
Default: ``false``
Some non-linear least squares problems are symbolically dense but
numerically sparse. i.e. at any given state only a small number of
Jacobian entries are non-zero, but the position and number of
non-zeros is different depending on the state. For these problems
it can be useful to factorize the sparse jacobian at each solver
iteration instead of including all of the zero entries in a single
general factorization.
If your problem does not have this property (or you do not know),
then it is probably best to keep this false, otherwise it will
likely lead to worse performance.
This setting only affects the `SPARSE_NORMAL_CHOLESKY` solver.
.. member:: bool Solver::Options::use_mixed_precision_solves
Default: ``false``
If true, the Gauss-Newton matrix is computed in *double* precision, but
its factorization is computed in **single** precision. This can result in
significant time and memory savings at the cost of some accuracy in the
Gauss-Newton step. Iterative refinement is used to recover some
of this accuracy back.
If ``use_mixed_precision_solves`` is true, we recommend setting
``max_num_refinement_iterations`` to 2-3.
See :ref:`section-mixed-precision` for more details.
.. member:: int Solver::Options::max_num_refinement_iterations
Default: ``0``
Number steps of the iterative refinement process to run when
computing the Gauss-Newton step, see
:member:`Solver::Options::use_mixed_precision_solves`.
.. member:: int Solver::Options::min_linear_solver_iterations
Default: ``0``
Minimum number of iterations used by the linear solver. This only
makes sense when the linear solver is an iterative solver, e.g.,
``ITERATIVE_SCHUR`` or ``CGNR``.
.. member:: int Solver::Options::max_linear_solver_iterations
Default: ``500``
Minimum number of iterations used by the linear solver. This only
makes sense when the linear solver is an iterative solver, e.g.,
``ITERATIVE_SCHUR`` or ``CGNR``.
.. member:: int Solver::Options::max_num_spse_iterations
Default: `5`
Maximum number of iterations performed by
``SCHUR_POWER_SERIES_EXPANSION``. Each iteration corresponds to one
more term in the power series expansion od the inverse of the Schur
complement. This value controls the maximum number of iterations
whether it is used as a preconditioner or just to initialize the
solution for ``ITERATIVE_SCHUR``.
.. member:: bool Solver:Options::use_spse_initialization
Default: ``false``
Use Schur power series expansion to initialize the solution for
``ITERATIVE_SCHUR``. This option can be set ``true`` regardless of
what preconditioner is being used.
.. member:: double Solver::Options::spse_tolerance
Default: `0.1`
When ``use_spse_initialization`` is ``true``, this parameter along
with ``max_num_spse_iterations`` controls the number of
``SCHUR_POWER_SERIES_EXPANSION`` iterations performed for
initialization. It is not used to control the preconditioner.
.. member:: double Solver::Options::eta
Default: ``1e-1``
Forcing sequence parameter. The truncated Newton solver uses this
number to control the relative accuracy with which the Newton step
is computed. This constant is passed to
``ConjugateGradientsSolver`` which uses it to terminate the
iterations when
.. math:: \frac{Q_i - Q_{i-1}}{Q_i} < \frac{\eta}{i}
.. member:: bool Solver::Options::jacobi_scaling
Default: ``true``
``true`` means that the Jacobian is scaled by the norm of its
columns before being passed to the linear solver. This improves the
numerical conditioning of the normal equations.
.. member:: bool Solver::Options::use_inner_iterations
Default: ``false``
Use a non-linear version of a simplified variable projection
algorithm. Essentially this amounts to doing a further optimization
on each Newton/Trust region step using a coordinate descent
algorithm. For more details, see :ref:`section-inner-iterations`.
**Note** Inner iterations cannot be used with :class:`Problem`
objects that have an :class:`EvaluationCallback` associated with
them.
.. member:: std::shared_ptr<ParameterBlockOrdering> Solver::Options::inner_iteration_ordering
Default: ``nullptr``
If :member:`Solver::Options::use_inner_iterations` true, then the
user has two choices.
1. Let the solver heuristically decide which parameter blocks to
optimize in each inner iteration. To do this, set
:member:`Solver::Options::inner_iteration_ordering` to ``nullptr``.
2. Specify a collection of of ordered independent sets. The lower
numbered groups are optimized before the higher number groups
during the inner optimization phase. Each group must be an
independent set. Not all parameter blocks need to be included in
the ordering.
See :ref:`section-ordering` for more details.
.. member:: double Solver::Options::inner_iteration_tolerance
Default: ``1e-3``
Generally speaking, inner iterations make significant progress in
the early stages of the solve and then their contribution drops
down sharply, at which point the time spent doing inner iterations
is not worth it.
Once the relative decrease in the objective function due to inner
iterations drops below ``inner_iteration_tolerance``, the use of
inner iterations in subsequent trust region minimizer iterations is
disabled.
.. member:: LoggingType Solver::Options::logging_type
Default: ``PER_MINIMIZER_ITERATION``
Valid values are ``SILENT`` and ``PER_MINIMIZER_ITERATION``.
.. member:: bool Solver::Options::minimizer_progress_to_stdout
Default: ``false``
By default the Minimizer's progress is logged to ``STDERR``
depending on the ``vlog`` level. If this flag is set to true, and
:member:`Solver::Options::logging_type` is not ``SILENT``, the
logging output is sent to ``STDOUT``.
For ``TRUST_REGION_MINIMIZER`` the progress display looks like
.. code-block:: bash
iter cost cost_change |gradient| |step| tr_ratio tr_radius ls_iter iter_time total_time
0 4.185660e+06 0.00e+00 1.09e+08 0.00e+00 0.00e+00 1.00e+04 0 7.59e-02 3.37e-01
1 1.062590e+05 4.08e+06 8.99e+06 5.36e+02 9.82e-01 3.00e+04 1 1.65e-01 5.03e-01
2 4.992817e+04 5.63e+04 8.32e+06 3.19e+02 6.52e-01 3.09e+04 1 1.45e-01 6.48e-01
Here
#. ``cost`` is the value of the objective function.
#. ``cost_change`` is the change in the value of the objective
function if the step computed in this iteration is accepted.
#. ``|gradient|`` is the max norm of the gradient.
#. ``|step|`` is the change in the parameter vector.
#. ``tr_ratio`` is the ratio of the actual change in the objective
function value to the change in the value of the trust
region model.
#. ``tr_radius`` is the size of the trust region radius.
#. ``ls_iter`` is the number of linear solver iterations used to
compute the trust region step. For direct/factorization based
solvers it is always 1, for iterative solvers like
``ITERATIVE_SCHUR`` it is the number of iterations of the
Conjugate Gradients algorithm.
#. ``iter_time`` is the time take by the current iteration.
#. ``total_time`` is the total time taken by the minimizer.
For ``LINE_SEARCH_MINIMIZER`` the progress display looks like
.. code-block:: bash
0: f: 2.317806e+05 d: 0.00e+00 g: 3.19e-01 h: 0.00e+00 s: 0.00e+00 e: 0 it: 2.98e-02 tt: 8.50e-02
1: f: 2.312019e+05 d: 5.79e+02 g: 3.18e-01 h: 2.41e+01 s: 1.00e+00 e: 1 it: 4.54e-02 tt: 1.31e-01
2: f: 2.300462e+05 d: 1.16e+03 g: 3.17e-01 h: 4.90e+01 s: 2.54e-03 e: 1 it: 4.96e-02 tt: 1.81e-01
Here
#. ``f`` is the value of the objective function.
#. ``d`` is the change in the value of the objective function if
the step computed in this iteration is accepted.
#. ``g`` is the max norm of the gradient.
#. ``h`` is the change in the parameter vector.
#. ``s`` is the optimal step length computed by the line search.
#. ``it`` is the time take by the current iteration.
#. ``tt`` is the total time taken by the minimizer.
.. member:: std::vector<int> Solver::Options::trust_region_minimizer_iterations_to_dump
Default: ``empty``
List of iterations at which the trust region minimizer should dump
the trust region problem. Useful for testing and benchmarking. If
``empty``, no problems are dumped.
.. member:: std::string Solver::Options::trust_region_problem_dump_directory
Default: ``/tmp``
Directory to which the problems should be written to. Should be
non-empty if
:member:`Solver::Options::trust_region_minimizer_iterations_to_dump` is
non-empty and
:member:`Solver::Options::trust_region_problem_dump_format_type` is not
``CONSOLE``.
.. member:: DumpFormatType Solver::Options::trust_region_problem_dump_format_type
Default: ``TEXTFILE``
The format in which trust region problems should be logged when
:member:`Solver::Options::trust_region_minimizer_iterations_to_dump`
is non-empty. There are three options:
* ``CONSOLE`` prints the linear least squares problem in a human
readable format to ``stderr``. The Jacobian is printed as a
dense matrix. The vectors :math:`D`, :math:`x` and :math:`f` are
printed as dense vectors. This should only be used for small
problems.
* ``TEXTFILE`` Write out the linear least squares problem to the
directory pointed to by
:member:`Solver::Options::trust_region_problem_dump_directory` as
text files which can be read into ``MATLAB/Octave``. The Jacobian
is dumped as a text file containing :math:`(i,j,s)` triplets, the
vectors :math:`D`, `x` and `f` are dumped as text files
containing a list of their values.
A ``MATLAB/Octave`` script called
``ceres_solver_iteration_???.m`` is also output, which can be
used to parse and load the problem into memory.
.. member:: bool Solver::Options::check_gradients
Default: ``false``
Check all Jacobians computed by each residual block with finite
differences. This is expensive since it involves computing the
derivative by normal means (e.g. user specified, autodiff, etc),
then also computing it using finite differences. The results are
compared, and if they differ substantially, the optimization fails
and the details are stored in the solver summary.
.. member:: double Solver::Options::gradient_check_relative_precision
Default: ``1e-8``
Precision to check for in the gradient checker. If the relative
difference between an element in a Jacobian exceeds this number,
then the Jacobian for that cost term is dumped.
.. member:: double Solver::Options::gradient_check_numeric_derivative_relative_step_size
Default: ``1e-6``
.. NOTE::
This option only applies to the numeric differentiation used for
checking the user provided derivatives when when
`Solver::Options::check_gradients` is true. If you are using
:class:`NumericDiffCostFunction` and are interested in changing
the step size for numeric differentiation in your cost function,
please have a look at :class:`NumericDiffOptions`.
Relative shift used for taking numeric derivatives when
`Solver::Options::check_gradients` is `true`.
For finite differencing, each dimension is evaluated at slightly
shifted values, e.g., for forward differences, the numerical
derivative is
.. math::
\delta &= gradient\_check\_numeric\_derivative\_relative\_step\_size\\
\Delta f &= \frac{f((1 + \delta) x) - f(x)}{\delta x}
The finite differencing is done along each dimension. The reason to
use a relative (rather than absolute) step size is that this way,
numeric differentiation works for functions where the arguments are
typically large (e.g. :math:`10^9`) and when the values are small
(e.g. :math:`10^{-5}`). It is possible to construct *torture cases*
which break this finite difference heuristic, but they do not come
up often in practice.
.. member:: bool Solver::Options::update_state_every_iteration
Default: ``false``
If ``update_state_every_iteration`` is ``true``, then Ceres Solver
will guarantee that at the end of every iteration and before any
user :class:`IterationCallback` is called, the parameter blocks are
updated to the current best solution found by the solver. Thus the
IterationCallback can inspect the values of the parameter blocks
for purposes of computation, visualization or termination.
If ``update_state_every_iteration`` is ``false`` then there is no
such guarantee, and user provided :class:`IterationCallback` s
should not expect to look at the parameter blocks and interpret
their values.
.. member:: std::vector<IterationCallback*> Solver::Options::callbacks
Default: ``empty``
Callbacks that are executed at the end of each iteration of the
minimizer. They are executed in the order that they are
specified in this vector.
By default, parameter blocks are updated only at the end of the
optimization, i.e., when the minimizer terminates. This means that
by default, if an :class:`IterationCallback` inspects the parameter
blocks, they will not see them changing in the course of the
optimization.
To tell Ceres to update the parameter blocks at the end of each
iteration and before calling the user's callback, set
:member:`Solver::Options::update_state_every_iteration` to
``true``.
See `examples/iteration_callback_example.cc
<https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/iteration_callback_example.cc>`_
for an example of an :class:`IterationCallback` that uses
:member:`Solver::Options::update_state_every_iteration` to log
changes to the parameter blocks over the course of the
optimization.
The solver does NOT take ownership of these pointers.
:class:`ParameterBlockOrdering`
===============================
.. class:: ParameterBlockOrdering
``ParameterBlockOrdering`` is a class for storing and manipulating
an ordered collection of groups/sets with the following semantics:
Group IDs are non-negative integer values. Elements are any type
that can serve as a key in a map or an element of a set.
An element can only belong to one group at a time. A group may
contain an arbitrary number of elements.
Groups are ordered by their group id.
.. function:: bool ParameterBlockOrdering::AddElementToGroup(const double* element, const int group)
Add an element to a group. If a group with this id does not exist,
one is created. This method can be called any number of times for
the same element. Group ids should be non-negative numbers. Return
value indicates if adding the element was a success.
.. function:: void ParameterBlockOrdering::Clear()
Clear the ordering.
.. function:: bool ParameterBlockOrdering::Remove(const double* element)
Remove the element, no matter what group it is in. If the element
is not a member of any group, calling this method will result in a
crash. Return value indicates if the element was actually removed.
.. function:: void ParameterBlockOrdering::Reverse()
Reverse the order of the groups in place.
.. function:: int ParameterBlockOrdering::GroupId(const double* element) const
Return the group id for the element. If the element is not a member
of any group, return -1.
.. function:: bool ParameterBlockOrdering::IsMember(const double* element) const
True if there is a group containing the parameter block.
.. function:: int ParameterBlockOrdering::GroupSize(const int group) const
This function always succeeds, i.e., implicitly there exists a
group for every integer.
.. function:: int ParameterBlockOrdering::NumElements() const
Number of elements in the ordering.
.. function:: int ParameterBlockOrdering::NumGroups() const
Number of groups with one or more elements.
:class:`IterationSummary`
=========================
.. class:: IterationSummary
:class:`IterationSummary` describes the state of the minimizer at
the end of each iteration.
.. member:: int IterationSummary::iteration
Current iteration number.
.. member:: bool IterationSummary::step_is_valid
Step was numerically valid, i.e., all values are finite and the
step reduces the value of the linearized model.
**Note**: :member:`IterationSummary::step_is_valid` is `false`
when :member:`IterationSummary::iteration` = 0.
.. member:: bool IterationSummary::step_is_nonmonotonic
Step did not reduce the value of the objective function
sufficiently, but it was accepted because of the relaxed
acceptance criterion used by the non-monotonic trust region
algorithm.
**Note**: :member:`IterationSummary::step_is_nonmonotonic` is
`false` when when :member:`IterationSummary::iteration` = 0.
.. member:: bool IterationSummary::step_is_successful
Whether or not the minimizer accepted this step or not.
If the ordinary trust region algorithm is used, this means that the
relative reduction in the objective function value was greater than
:member:`Solver::Options::min_relative_decrease`. However, if the
non-monotonic trust region algorithm is used
(:member:`Solver::Options::use_nonmonotonic_steps` = `true`), then
even if the relative decrease is not sufficient, the algorithm may
accept the step and the step is declared successful.
**Note**: :member:`IterationSummary::step_is_successful` is `false`
when when :member:`IterationSummary::iteration` = 0.
.. member:: double IterationSummary::cost
Value of the objective function.
.. member:: double IterationSummary::cost_change
Change in the value of the objective function in this
iteration. This can be positive or negative.
.. member:: double IterationSummary::gradient_max_norm
Infinity norm of the gradient vector.
.. member:: double IterationSummary::gradient_norm
2-norm of the gradient vector.
.. member:: double IterationSummary::step_norm
2-norm of the size of the step computed in this iteration.
.. member:: double IterationSummary::relative_decrease
For trust region algorithms, the ratio of the actual change in cost
and the change in the cost of the linearized approximation.
This field is not used when a linear search minimizer is used.
.. member:: double IterationSummary::trust_region_radius
Size of the trust region at the end of the current iteration. For
the Levenberg-Marquardt algorithm, the regularization parameter is
1.0 / :member:`IterationSummary::trust_region_radius`.
.. member:: double IterationSummary::eta
For the inexact step Levenberg-Marquardt algorithm, this is the
relative accuracy with which the step is solved. This number is
only applicable to the iterative solvers capable of solving linear
systems inexactly. Factorization-based exact solvers always have an
eta of 0.0.
.. member:: double IterationSummary::step_size
Step sized computed by the line search algorithm.
This field is not used when a trust region minimizer is used.
.. member:: int IterationSummary::line_search_function_evaluations
Number of function evaluations used by the line search algorithm.
This field is not used when a trust region minimizer is used.
.. member:: int IterationSummary::linear_solver_iterations
Number of iterations taken by the linear solver to solve for the
trust region step.
Currently this field is not used when a line search minimizer is
used.
.. member:: double IterationSummary::iteration_time_in_seconds
Time (in seconds) spent inside the minimizer loop in the current
iteration.
.. member:: double IterationSummary::step_solver_time_in_seconds
Time (in seconds) spent inside the trust region step solver.
.. member:: double IterationSummary::cumulative_time_in_seconds
Time (in seconds) since the user called Solve().
:class:`IterationCallback`
==========================
.. class:: IterationCallback
Interface for specifying callbacks that are executed at the end of
each iteration of the minimizer.
.. code-block:: c++
class IterationCallback {
public:
virtual ~IterationCallback() {}
virtual CallbackReturnType operator()(const IterationSummary& summary) = 0;
};
The solver uses the return value of ``operator()`` to decide whether
to continue solving or to terminate. The user can return three
values.
#. ``SOLVER_ABORT`` indicates that the callback detected an abnormal
situation. The solver returns without updating the parameter
blocks (unless ``Solver::Options::update_state_every_iteration`` is
set true). Solver returns with ``Solver::Summary::termination_type``
set to ``USER_FAILURE``.
#. ``SOLVER_TERMINATE_SUCCESSFULLY`` indicates that there is no need
to optimize anymore (some user specified termination criterion
has been met). Solver returns with
``Solver::Summary::termination_type``` set to ``USER_SUCCESS``.
#. ``SOLVER_CONTINUE`` indicates that the solver should continue
optimizing.
The return values can be used to implement custom termination
criterion that supercede the iteration/time/tolerance based
termination implemented by Ceres.
For example, the following :class:`IterationCallback` is used
internally by Ceres to log the progress of the optimization.
.. code-block:: c++
class LoggingCallback : public IterationCallback {
public:
explicit LoggingCallback(bool log_to_stdout)
: log_to_stdout_(log_to_stdout) {}
~LoggingCallback() {}
CallbackReturnType operator()(const IterationSummary& summary) {
const char* kReportRowFormat =
"% 4d: f:% 8e d:% 3.2e g:% 3.2e h:% 3.2e "
"rho:% 3.2e mu:% 3.2e eta:% 3.2e li:% 3d";
string output = StringPrintf(kReportRowFormat,
summary.iteration,
summary.cost,
summary.cost_change,
summary.gradient_max_norm,
summary.step_norm,
summary.relative_decrease,
summary.trust_region_radius,
summary.eta,
summary.linear_solver_iterations);
if (log_to_stdout_) {
cout << output << endl;
} else {
VLOG(1) << output;
}
return SOLVER_CONTINUE;
}
private:
const bool log_to_stdout_;
};
See `examples/evaluation_callback_example.cc
<https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/iteration_callback_example.cc>`_
for another example that uses
:member:`Solver::Options::update_state_every_iteration` to log
changes to the parameter blocks over the course of the optimization.
:class:`CRSMatrix`
==================
.. class:: CRSMatrix
A compressed row sparse matrix used primarily for communicating the
Jacobian matrix to the user.
.. member:: int CRSMatrix::num_rows
Number of rows.
.. member:: int CRSMatrix::num_cols
Number of columns.
.. member:: std::vector<int> CRSMatrix::rows
:member:`CRSMatrix::rows` is a :member:`CRSMatrix::num_rows` + 1
sized array that points into the :member:`CRSMatrix::cols` and
:member:`CRSMatrix::values` array.
.. member:: std::vector<int> CRSMatrix::cols
:member:`CRSMatrix::cols` contain as many entries as there are
non-zeros in the matrix.
For each row ``i``, ``cols[rows[i]]`` ... ``cols[rows[i + 1] - 1]``
are the indices of the non-zero columns of row ``i``.
.. member:: std::vector<double> CRSMatrix::values
:member:`CRSMatrix::values` contain as many entries as there are
non-zeros in the matrix.
For each row ``i``,
``values[rows[i]]`` ... ``values[rows[i + 1] - 1]`` are the values
of the non-zero columns of row ``i``.
e.g., consider the 3x4 sparse matrix
.. code-block:: c++
0 10 0 4
0 2 -3 2
1 2 0 0
The three arrays will be:
.. code-block:: c++
-row0- ---row1--- -row2-
rows = [ 0, 2, 5, 7]
cols = [ 1, 3, 1, 2, 3, 0, 1]
values = [10, 4, 2, -3, 2, 1, 2]
:class:`Solver::Summary`
========================
.. class:: Solver::Summary
Summary of the various stages of the solver after termination.
.. function:: std::string Solver::Summary::BriefReport() const
A brief one line description of the state of the solver after
termination.
.. function:: std::string Solver::Summary::FullReport() const
A full multiline description of the state of the solver after
termination.
.. function:: bool Solver::Summary::IsSolutionUsable() const
Whether the solution returned by the optimization algorithm can be
relied on to be numerically sane. This will be the case if
`Solver::Summary:termination_type` is set to `CONVERGENCE`,
`USER_SUCCESS` or `NO_CONVERGENCE`, i.e., either the solver
converged by meeting one of the convergence tolerances or because
the user indicated that it had converged or it ran to the maximum
number of iterations or time.
.. member:: MinimizerType Solver::Summary::minimizer_type
Type of minimization algorithm used.
.. member:: TerminationType Solver::Summary::termination_type
The cause of the minimizer terminating.
.. member:: std::string Solver::Summary::message
Reason why the solver terminated.
.. member:: double Solver::Summary::initial_cost
Cost of the problem (value of the objective function) before the
optimization.
.. member:: double Solver::Summary::final_cost
Cost of the problem (value of the objective function) after the
optimization.
.. member:: double Solver::Summary::fixed_cost
The part of the total cost that comes from residual blocks that
were held fixed by the preprocessor because all the parameter
blocks that they depend on were fixed.
.. member:: std::vector<IterationSummary> Solver::Summary::iterations
:class:`IterationSummary` for each minimizer iteration in order.
.. member:: int Solver::Summary::num_successful_steps
Number of minimizer iterations in which the step was
accepted. Unless :member:`Solver::Options::use_nonmonotonic_steps`
is `true` this is also the number of steps in which the objective
function value/cost went down.
.. member:: int Solver::Summary::num_unsuccessful_steps
Number of minimizer iterations in which the step was rejected
either because it did not reduce the cost enough or the step was
not numerically valid.
.. member:: int Solver::Summary::num_inner_iteration_steps
Number of times inner iterations were performed.
.. member:: int Solver::Summary::num_line_search_steps
Total number of iterations inside the line search algorithm across
all invocations. We call these iterations "steps" to distinguish
them from the outer iterations of the line search and trust region
minimizer algorithms which call the line search algorithm as a
subroutine.
.. member:: double Solver::Summary::preprocessor_time_in_seconds
Time (in seconds) spent in the preprocessor.
.. member:: double Solver::Summary::minimizer_time_in_seconds
Time (in seconds) spent in the minimizer.
.. member:: double Solver::Summary::postprocessor_time_in_seconds
Time (in seconds) spent in the post processor.
.. member:: double Solver::Summary::total_time_in_seconds
Time (in seconds) spent in the solver.
.. member:: double Solver::Summary::linear_solver_time_in_seconds
Time (in seconds) spent in the linear solver computing the trust
region step.
.. member:: int Solver::Summary::num_linear_solves
Number of times the Newton step was computed by solving a linear
system. This does not include linear solves used by inner
iterations.
.. member:: double Solver::Summary::residual_evaluation_time_in_seconds
Time (in seconds) spent evaluating the residual vector.
.. member:: int Solver::Summary::num_residual_evaluations
Number of times only the residuals were evaluated.
.. member:: double Solver::Summary::jacobian_evaluation_time_in_seconds
Time (in seconds) spent evaluating the Jacobian matrix.
.. member:: int Solver::Summary::num_jacobian_evaluations
Number of times only the Jacobian and the residuals were evaluated.
.. member:: double Solver::Summary::inner_iteration_time_in_seconds
Time (in seconds) spent doing inner iterations.
.. member:: int Solver::Summary::num_parameter_blocks
Number of parameter blocks in the problem.
.. member:: int Solver::Summary::num_parameters
Number of parameters in the problem.
.. member:: int Solver::Summary::num_effective_parameters
Dimension of the tangent space of the problem (or the number of
columns in the Jacobian for the problem). This is different from
:member:`Solver::Summary::num_parameters` if a parameter block is
associated with a :class:`Manifold`.
.. member:: int Solver::Summary::num_residual_blocks
Number of residual blocks in the problem.
.. member:: int Solver::Summary::num_residuals
Number of residuals in the problem.
.. member:: int Solver::Summary::num_parameter_blocks_reduced
Number of parameter blocks in the problem after the inactive and
constant parameter blocks have been removed. A parameter block is
inactive if no residual block refers to it.
.. member:: int Solver::Summary::num_parameters_reduced
Number of parameters in the reduced problem.
.. member:: int Solver::Summary::num_effective_parameters_reduced
Dimension of the tangent space of the reduced problem (or the
number of columns in the Jacobian for the reduced problem). This is
different from :member:`Solver::Summary::num_parameters_reduced` if
a parameter block in the reduced problem is associated with a
:class:`Manifold`.
.. member:: int Solver::Summary::num_residual_blocks_reduced
Number of residual blocks in the reduced problem.
.. member:: int Solver::Summary::num_residuals_reduced
Number of residuals in the reduced problem.
.. member:: int Solver::Summary::num_threads_given
Number of threads specified by the user for Jacobian and residual
evaluation.
.. member:: int Solver::Summary::num_threads_used
Number of threads actually used by the solver for Jacobian and
residual evaluation.
.. member:: LinearSolverType Solver::Summary::linear_solver_type_given
Type of the linear solver requested by the user.
.. member:: LinearSolverType Solver::Summary::linear_solver_type_used
Type of the linear solver actually used. This may be different from
:member:`Solver::Summary::linear_solver_type_given` if Ceres
determines that the problem structure is not compatible with the
linear solver requested or if the linear solver requested by the
user is not available, e.g. The user requested
`SPARSE_NORMAL_CHOLESKY` but no sparse linear algebra library was
available.
.. member:: std::vector<int> Solver::Summary::linear_solver_ordering_given
Size of the elimination groups given by the user as hints to the
linear solver.
.. member:: std::vector<int> Solver::Summary::linear_solver_ordering_used
Size of the parameter groups used by the solver when ordering the
columns of the Jacobian. This maybe different from
:member:`Solver::Summary::linear_solver_ordering_given` if the user
left :member:`Solver::Summary::linear_solver_ordering_given` blank
and asked for an automatic ordering, or if the problem contains
some constant or inactive parameter blocks.
.. member:: std::string Solver::Summary::schur_structure_given
For Schur type linear solvers, this string describes the template
specialization which was detected in the problem and should be
used.
.. member:: std::string Solver::Summary::schur_structure_used
For Schur type linear solvers, this string describes the template
specialization that was actually instantiated and used. The reason
this will be different from
:member:`Solver::Summary::schur_structure_given` is because the
corresponding template specialization does not exist.
Template specializations can be added to ceres by editing
``internal/ceres/generate_template_specializations.py``
.. member:: bool Solver::Summary::inner_iterations_given
`True` if the user asked for inner iterations to be used as part of
the optimization.
.. member:: bool Solver::Summary::inner_iterations_used
`True` if the user asked for inner iterations to be used as part of
the optimization and the problem structure was such that they were
actually performed. For example, in a problem with just one parameter
block, inner iterations are not performed.
.. member:: std::vector<int> Solver::Summary::inner_iteration_ordering_given
Size of the parameter groups given by the user for performing inner
iterations.
.. member:: std::vector<int> Solver::Summary::inner_iteration_ordering_used
Size of the parameter groups given used by the solver for
performing inner iterations. This maybe different from
:member:`Solver::Summary::inner_iteration_ordering_given` if the
user left :member:`Solver::Summary::inner_iteration_ordering_given`
blank and asked for an automatic ordering, or if the problem
contains some constant or inactive parameter blocks.
.. member:: PreconditionerType Solver::Summary::preconditioner_type_given
Type of the preconditioner requested by the user.
.. member:: PreconditionerType Solver::Summary::preconditioner_type_used
Type of the preconditioner actually used. This may be different
from :member:`Solver::Summary::linear_solver_type_given` if Ceres
determines that the problem structure is not compatible with the
linear solver requested or if the linear solver requested by the
user is not available.
.. member:: VisibilityClusteringType Solver::Summary::visibility_clustering_type
Type of clustering algorithm used for visibility based
preconditioning. Only meaningful when the
:member:`Solver::Summary::preconditioner_type_used` is
``CLUSTER_JACOBI`` or ``CLUSTER_TRIDIAGONAL``.
.. member:: TrustRegionStrategyType Solver::Summary::trust_region_strategy_type
Type of trust region strategy.
.. member:: DoglegType Solver::Summary::dogleg_type
Type of dogleg strategy used for solving the trust region problem.
.. member:: DenseLinearAlgebraLibraryType Solver::Summary::dense_linear_algebra_library_type
Type of the dense linear algebra library used.
.. member:: SparseLinearAlgebraLibraryType Solver::Summary::sparse_linear_algebra_library_type
Type of the sparse linear algebra library used.
.. member:: LineSearchDirectionType Solver::Summary::line_search_direction_type
Type of line search direction used.
.. member:: LineSearchType Solver::Summary::line_search_type
Type of the line search algorithm used.
.. member:: LineSearchInterpolationType Solver::Summary::line_search_interpolation_type
When performing line search, the degree of the polynomial used to
approximate the objective function.
.. member:: NonlinearConjugateGradientType Solver::Summary::nonlinear_conjugate_gradient_type
If the line search direction is `NONLINEAR_CONJUGATE_GRADIENT`,
then this indicates the particular variant of non-linear conjugate
gradient used.
.. member:: int Solver::Summary::max_lbfgs_rank
If the type of the line search direction is `LBFGS`, then this
indicates the rank of the Hessian approximation.