|  | .. highlight:: c++ | 
|  |  | 
|  | .. default-domain:: cpp | 
|  |  | 
|  | .. _chapter-tutorial: | 
|  |  | 
|  | ======== | 
|  | Tutorial | 
|  | ======== | 
|  | Ceres solves robustified non-linear least squares problems of the form | 
|  |  | 
|  | .. math:: \frac{1}{2}\sum_{i=1} \rho_i\left(\left\|f_i\left(x_{i_1}, ... ,x_{i_k}\right)\right\|^2\right). | 
|  | :label: ceresproblem | 
|  |  | 
|  | The expression | 
|  | :math:`\rho_i\left(\left\|f_i\left(x_{i_1},...,x_{i_k}\right)\right\|^2\right)` | 
|  | is known as a ``ResidualBlock``, where :math:`f_i(\cdot)` is a | 
|  | :class:`CostFunction` that depends on the parameter blocks | 
|  | :math:`\left[x_{i_1},... , x_{i_k}\right]`. In most optimization | 
|  | problems small groups of scalars occur together. For example the three | 
|  | components of a translation vector and the four components of the | 
|  | quaternion that define the pose of a camera. We refer to such a group | 
|  | of small scalars as a ``ParameterBlock``. Of course a | 
|  | ``ParameterBlock`` can just be a single parameter. | 
|  |  | 
|  | :math:`\rho_i` is a :class:`LossFunction`. A :class:`LossFunction` is | 
|  | a scalar function that is used to reduce the influence of outliers on | 
|  | the solution of non-linear least squares problems. As a special case, | 
|  | when :math:`\rho_i(x) = x`, i.e., the identity function, we get the | 
|  | more familiar `non-linear least squares problem | 
|  | <http://en.wikipedia.org/wiki/Non-linear_least_squares>`_. | 
|  |  | 
|  | .. math:: \frac{1}{2}\sum_{i=1} \left\|f_i\left(x_{i_1}, ... ,x_{i_k}\right)\right\|^2. | 
|  | :label: ceresproblem2 | 
|  |  | 
|  | In this chapter we will learn how to solve :eq:`ceresproblem` using | 
|  | Ceres Solver. Full working code for all the examples described in this | 
|  | chapter and more can be found in the `examples | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/>`_ | 
|  | directory. | 
|  |  | 
|  | .. _section-hello-world: | 
|  |  | 
|  | Hello World! | 
|  | ============ | 
|  |  | 
|  | To get started, consider the problem of finding the minimum of the | 
|  | function | 
|  |  | 
|  | .. math:: \frac{1}{2}(10 -x)^2. | 
|  |  | 
|  | This is a trivial problem, whose minimum is located at :math:`x = 10`, | 
|  | but it is a good place to start to illustrate the basics of solving a | 
|  | problem with Ceres [#f1]_. | 
|  |  | 
|  | The first step is to write a functor that will evaluate this the | 
|  | function :math:`f(x) = 10 - x`: | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | struct CostFunctor { | 
|  | template <typename T> | 
|  | bool operator()(const T* const x, T* residual) const { | 
|  | residual[0] = T(10.0) - x[0]; | 
|  | return true; | 
|  | } | 
|  | }; | 
|  |  | 
|  | The important thing to note here is that ``operator()`` is a templated | 
|  | method, which assumes that all its inputs and outputs are of some type | 
|  | ``T``. The reason for using templates here is because Ceres will call | 
|  | ``CostFunctor::operator<T>()``, with ``T=double`` when just the | 
|  | residual is needed, and with a special type ``T=Jet`` when the | 
|  | Jacobians are needed. In :ref:`section-derivatives` we discuss the | 
|  | various ways of supplying derivatives to Ceres in more detail. | 
|  |  | 
|  | Once we have a way of computing the residual function, it is now time | 
|  | to construct a non-linear least squares problem using it and have | 
|  | Ceres solve it. | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | int main(int argc, char** argv) { | 
|  | google::InitGoogleLogging(argv[0]); | 
|  |  | 
|  | // The variable to solve for with its initial value. | 
|  | double initial_x = 5.0; | 
|  | double x = initial_x; | 
|  |  | 
|  | // Build the problem. | 
|  | Problem problem; | 
|  |  | 
|  | // Set up the only cost function (also known as residual). This uses | 
|  | // auto-differentiation to obtain the derivative (jacobian). | 
|  | CostFunction* cost_function = | 
|  | new AutoDiffCostFunction<CostFunctor, 1, 1>(new CostFunctor); | 
|  | problem.AddResidualBlock(cost_function, NULL, &x); | 
|  |  | 
|  | // Run the solver! | 
|  | Solver::Options options; | 
|  | options.linear_solver_type = ceres::DENSE_QR; | 
|  | options.minimizer_progress_to_stdout = true; | 
|  | Solver::Summary summary; | 
|  | Solve(options, &problem, &summary); | 
|  |  | 
|  | std::cout << summary.BriefReport() << "\n"; | 
|  | std::cout << "x : " << initial_x | 
|  | << " -> " << x << "\n"; | 
|  | return 0; | 
|  | } | 
|  |  | 
|  | :class:`AutoDiffCostFunction` takes a ``CostFunctor`` as input, | 
|  | automatically differentiates it and gives it a :class:`CostFunction` | 
|  | interface. | 
|  |  | 
|  | Compiling and running `examples/helloworld.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/helloworld.cc>`_ | 
|  | gives us | 
|  |  | 
|  | .. code-block:: bash | 
|  |  | 
|  | 0: f: 1.250000e+01 d: 0.00e+00 g: 5.00e+00 h: 0.00e+00 rho: 0.00e+00 mu: 1.00e+04 li:  0 it: 6.91e-06 tt: 1.91e-03 | 
|  | 1: f: 1.249750e-07 d: 1.25e+01 g: 5.00e-04 h: 5.00e+00 rho: 1.00e+00 mu: 3.00e+04 li:  1 it: 2.81e-05 tt: 1.99e-03 | 
|  | 2: f: 1.388518e-16 d: 1.25e-07 g: 1.67e-08 h: 5.00e-04 rho: 1.00e+00 mu: 9.00e+04 li:  1 it: 1.00e-05 tt: 2.01e-03 | 
|  | Ceres Solver Report: Iterations: 2, Initial cost: 1.250000e+01, Final cost: 1.388518e-16, Termination: PARAMETER_TOLERANCE. | 
|  | x : 5 -> 10 | 
|  |  | 
|  | Starting from a :math:`x=5`, the solver in two iterations goes to 10 | 
|  | [#f2]_. The careful reader will note that this is a linear problem and | 
|  | one linear solve should be enough to get the optimal value.  The | 
|  | default configuration of the solver is aimed at non-linear problems, | 
|  | and for reasons of simplicity we did not change it in this example. It | 
|  | is indeed possible to obtain the solution to this problem using Ceres | 
|  | in one iteration. Also note that the solver did get very close to the | 
|  | optimal function value of 0 in the very first iteration. We will | 
|  | discuss these issues in greater detail when we talk about convergence | 
|  | and parameter settings for Ceres. | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f1] `examples/helloworld.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/helloworld.cc>`_ | 
|  |  | 
|  | .. [#f2] Actually the solver ran for three iterations, and it was | 
|  | by looking at the value returned by the linear solver in the third | 
|  | iteration, it observed that the update to the parameter block was too | 
|  | small and declared convergence. Ceres only prints out the display at | 
|  | the end of an iteration, and terminates as soon as it detects | 
|  | convergence, which is why you only see two iterations here and not | 
|  | three. | 
|  |  | 
|  | .. _section-derivatives: | 
|  |  | 
|  |  | 
|  | Derivatives | 
|  | =========== | 
|  |  | 
|  | Ceres Solver like most optimization packages, depends on being able to | 
|  | evaluate the value and the derivatives of each term in the objective | 
|  | function at arbitrary parameter values. Doing so correctly and | 
|  | efficiently is essential to getting good results.  Ceres Solver | 
|  | provides a number of ways of doing so. You have already seen one of | 
|  | them in action -- | 
|  | Automatic Differentiation in `examples/helloworld.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/helloworld.cc>`_ | 
|  |  | 
|  | We now consider the other two possibilities. Analytic and numeric | 
|  | derivatives. | 
|  |  | 
|  |  | 
|  | Numeric Derivatives | 
|  | ------------------- | 
|  |  | 
|  | In some cases, its not possible to define a templated cost functor, | 
|  | for example when the evaluation of the residual involves a call to a | 
|  | library function that you do not have control over.  In such a | 
|  | situation, numerical differentiation can be used. The user defines a | 
|  | functor which computes the residual value and construct a | 
|  | :class:`NumericDiffCostFunction` using it. e.g., for :math:`f(x) = 10 - x` | 
|  | the corresponding functor would be | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | struct NumericDiffCostFunctor { | 
|  | bool operator()(const double* const x, double* residual) const { | 
|  | residual[0] = 10.0 - x[0]; | 
|  | return true; | 
|  | } | 
|  | }; | 
|  |  | 
|  | Which is added to the :class:`Problem` as: | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | CostFunction* cost_function = | 
|  | new NumericDiffCostFunction<F4, ceres::CENTRAL, 1, 1, 1>( | 
|  | new NumericDiffCostFunctor) | 
|  | problem.AddResidualBlock(cost_function, NULL, &x); | 
|  |  | 
|  | Notice the parallel from when we were using automatic differentiation | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | CostFunction* cost_function = | 
|  | new AutoDiffCostFunction<CostFunctor, 1, 1>(new CostFunctor); | 
|  | problem.AddResidualBlock(cost_function, NULL, &x); | 
|  |  | 
|  | The construction looks almost identical to the used for automatic | 
|  | differentiation, except for an extra template parameter that indicates | 
|  | the kind of finite differencing scheme to be used for computing the | 
|  | numerical derivatives [#f3]_. For more details see the documentation | 
|  | for :class:`NumericDiffCostFunction`. | 
|  |  | 
|  | **Generally speaking we recommend automatic differentiation instead of | 
|  | numeric differentiation. The use of C++ templates makes automatic | 
|  | differentiation efficient, whereas numeric differentiation is | 
|  | expensive, prone to numeric errors, and leads to slower convergence.** | 
|  |  | 
|  |  | 
|  | Analytic Derivatives | 
|  | -------------------- | 
|  |  | 
|  | In some cases, using automatic differentiation is not possible. For | 
|  | example, Ceres currently does not support automatic differentiation of | 
|  | functors with dynamically sized parameter blocks. Or it may be the | 
|  | case that it is more efficient to compute the derivatives in closed | 
|  | form instead of relying on the chain rule used by the automatic | 
|  | differentition code. | 
|  |  | 
|  | In such cases, it is possible to supply your own residual and jacobian | 
|  | computation code. To do this, define a subclass of | 
|  | :class:`CostFunction` or :class:`SizedCostFunction` if you know the | 
|  | sizes of the parameters and residuals at compile time. Here for | 
|  | example is ``SimpleCostFunction`` that implements :math:`f(x) = 10 - | 
|  | x`. | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | class QuadraticCostFunction : public ceres::SizedCostFunction<1, 1> { | 
|  | public: | 
|  | virtual ~QuadraticCostFunction() {} | 
|  | virtual bool Evaluate(double const* const* parameters, | 
|  | double* residuals, | 
|  | double** jacobians) const { | 
|  | const double x = parameters[0][0]; | 
|  | residuals[0] = 10 - x; | 
|  |  | 
|  | // Compute the Jacobian if asked for. | 
|  | if (jacobians != NULL) { | 
|  | jacobians[0][0] = -1; | 
|  | } | 
|  | return true; | 
|  | } | 
|  | }; | 
|  |  | 
|  |  | 
|  | ``SimpleCostFunction::Evaluate`` is provided with an input array of | 
|  | ``parameters``, an output array ``residuals`` for residuals and an | 
|  | output array ``jacobians`` for Jacobians. The ``jacobians`` array is | 
|  | optional, ``Evaluate`` is expected to check when it is non-null, and | 
|  | if it is the case then fill it with the values of the derivative of | 
|  | the residual function. In this case since the residual function is | 
|  | linear, the Jacobian is constant [#f4]_ . | 
|  |  | 
|  | As can be seen from the above code fragments, implementing | 
|  | :class:`CostFunction` objects is a bit tedious. We recommend that | 
|  | unless you have a good reason to manage the jacobian computation | 
|  | yourself, you use :class:`AutoDiffCostFunction` or | 
|  | :class:`NumericDiffCostFunction` to construct your residual blocks. | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f3] `examples/helloworld_numeric_diff.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/helloworld_numeric_diff.cc>`_. | 
|  |  | 
|  | .. [#f4] `examples/helloworld_analytic_diff.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/helloworld_analytic_diff.cc>`_. | 
|  |  | 
|  |  | 
|  | .. _section-powell: | 
|  |  | 
|  | Powell's Function | 
|  | ================= | 
|  |  | 
|  | Consider now a slightly more complicated example -- the minimization | 
|  | of Powell's function. Let :math:`x = \left[x_1, x_2, x_3, x_4 \right]` | 
|  | and | 
|  |  | 
|  |  | 
|  | .. math:: | 
|  |  | 
|  | \begin{align} | 
|  | f_1(x) &= x_1 + 10x_2 \\ | 
|  | f_2(x) &= \sqrt{5}  (x_3 - x_4)\\ | 
|  | f_3(x) &= (x_2 - 2x_3)^2\\ | 
|  | f_4(x) &= \sqrt{10}  (x_1 - x_4)^2\\ | 
|  | F(x) &= \left[f_1(x),\ f_2(x),\ f_3(x),\ f_4(x) \right] | 
|  | \end{align} | 
|  |  | 
|  |  | 
|  | :math:`F(x)` is a function of four parameters, has four residuals | 
|  | and we wish to find :math:`x` such that :math:`\frac{1}{2}\|F(x)\|^2` | 
|  | is minimized. | 
|  |  | 
|  | Again, the first step is to define functors that evaluate of the terms | 
|  | in the objective functor. Here is the code for evaluating | 
|  | :math:`f_4(x_1, x_4)`: | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | struct F4 { | 
|  | template <typename T> | 
|  | bool operator()(const T* const x1, const T* const x4, T* residual) const { | 
|  | residual[0] = T(sqrt(10.0)) * (x1[0] - x4[0]) * (x1[0] - x4[0]); | 
|  | return true; | 
|  | } | 
|  | }; | 
|  |  | 
|  |  | 
|  | Similarly, we can define classes ``F1``, ``F2`` and ``F4`` to evaluate | 
|  | :math:`f_1(x_1, x_2)`, :math:`f_2(x_3, x_4)` and :math:`f_3(x_2, x_3)` | 
|  | respectively. Using these, the problem can be constructed as follows: | 
|  |  | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | double x1 =  3.0; double x2 = -1.0; double x3 =  0.0; double x4 = 1.0; | 
|  |  | 
|  | Problem problem; | 
|  |  | 
|  | // Add residual terms to the problem using the using the autodiff | 
|  | // wrapper to get the derivatives automatically. | 
|  | problem.AddResidualBlock( | 
|  | new AutoDiffCostFunction<F1, 1, 1, 1>(new F1), NULL, &x1, &x2); | 
|  | problem.AddResidualBlock( | 
|  | new AutoDiffCostFunction<F2, 1, 1, 1>(new F2), NULL, &x3, &x4); | 
|  | problem.AddResidualBlock( | 
|  | new AutoDiffCostFunction<F3, 1, 1, 1>(new F3), NULL, &x2, &x3) | 
|  | problem.AddResidualBlock( | 
|  | new AutoDiffCostFunction<F4, 1, 1, 1>(new F4), NULL, &x1, &x4); | 
|  |  | 
|  |  | 
|  | Note that each ``ResidualBlock`` only depends on the two parameters | 
|  | that the corresponding residual object depends on and not on all four | 
|  | parameters. | 
|  |  | 
|  | Compiling and running `examples/powell.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/powell.cc>`_ | 
|  | gives us: | 
|  |  | 
|  | .. code-block:: bash | 
|  |  | 
|  | Initial x1 = 3, x2 = -1, x3 = 0, x4 = 1 | 
|  | 0: f: 1.075000e+02 d: 0.00e+00 g: 1.55e+02 h: 0.00e+00 rho: 0.00e+00 mu: 1.00e+04 li:  0 it: 0.00e+00 tt: 0.00e+00 | 
|  | 1: f: 5.036190e+00 d: 1.02e+02 g: 2.00e+01 h: 2.16e+00 rho: 9.53e-01 mu: 3.00e+04 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 2: f: 3.148168e-01 d: 4.72e+00 g: 2.50e+00 h: 6.23e-01 rho: 9.37e-01 mu: 9.00e+04 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 3: f: 1.967760e-02 d: 2.95e-01 g: 3.13e-01 h: 3.08e-01 rho: 9.37e-01 mu: 2.70e+05 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 4: f: 1.229900e-03 d: 1.84e-02 g: 3.91e-02 h: 1.54e-01 rho: 9.37e-01 mu: 8.10e+05 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 5: f: 7.687123e-05 d: 1.15e-03 g: 4.89e-03 h: 7.69e-02 rho: 9.37e-01 mu: 2.43e+06 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 6: f: 4.804625e-06 d: 7.21e-05 g: 6.11e-04 h: 3.85e-02 rho: 9.37e-01 mu: 7.29e+06 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 7: f: 3.003028e-07 d: 4.50e-06 g: 7.64e-05 h: 1.92e-02 rho: 9.37e-01 mu: 2.19e+07 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 8: f: 1.877006e-08 d: 2.82e-07 g: 9.54e-06 h: 9.62e-03 rho: 9.37e-01 mu: 6.56e+07 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 9: f: 1.173223e-09 d: 1.76e-08 g: 1.19e-06 h: 4.81e-03 rho: 9.37e-01 mu: 1.97e+08 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 10: f: 7.333425e-11 d: 1.10e-09 g: 1.49e-07 h: 2.40e-03 rho: 9.37e-01 mu: 5.90e+08 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 11: f: 4.584044e-12 d: 6.88e-11 g: 1.86e-08 h: 1.20e-03 rho: 9.37e-01 mu: 1.77e+09 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | Ceres Solver Report: Iterations: 12, Initial cost: 1.075000e+02, Final cost: 4.584044e-12, Termination: GRADIENT_TOLERANCE. | 
|  | Final x1 = 0.00116741, x2 = -0.000116741, x3 = 0.000190535, x4 = 0.000190535 | 
|  |  | 
|  | It is easy to see that the optimal solution to this problem is at | 
|  | :math:`x_1=0, x_2=0, x_3=0, x_4=0` with an objective function value of | 
|  | :math:`0`. In 10 iterations, Ceres finds a solution with an objective | 
|  | function value of :math:`4\times 10^{-12}`. | 
|  |  | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f5] `examples/powell.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/powell.cc>`_. | 
|  |  | 
|  |  | 
|  | .. _section-fitting: | 
|  |  | 
|  | Curve Fitting | 
|  | ============= | 
|  |  | 
|  | The examples we have seen until now are simple optimization problems | 
|  | with no data. The original purpose of least squares and non-linear | 
|  | least squares analysis was fitting curves to data. It is only | 
|  | appropriate that we now consider an example of such a problem | 
|  | [#f6]_. It contains data generated by sampling the curve :math:`y = | 
|  | e^{0.3x + 0.1}` and adding Gaussian noise with standard deviation | 
|  | :math:`\sigma = 0.2`. Let us fit some data to the curve | 
|  |  | 
|  | .. math::  y = e^{mx + c}. | 
|  |  | 
|  | We begin by defining a templated object to evaluate the | 
|  | residual. There will be a residual for each observation. | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | struct ExponentialResidual { | 
|  | ExponentialResidual(double x, double y) | 
|  | : x_(x), y_(y) {} | 
|  |  | 
|  | template <typename T> | 
|  | bool operator()(const T* const m, const T* const c, T* residual) const { | 
|  | residual[0] = T(y_) - exp(m[0] * T(x_) + c[0]); | 
|  | return true; | 
|  | } | 
|  |  | 
|  | private: | 
|  | // Observations for a sample. | 
|  | const double x_; | 
|  | const double y_; | 
|  | }; | 
|  |  | 
|  | Assuming the observations are in a :math:`2n` sized array called | 
|  | ``data`` the problem construction is a simple matter of creating a | 
|  | :class:`CostFunction` for every observation. | 
|  |  | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | double m = 0.0; | 
|  | double c = 0.0; | 
|  |  | 
|  | Problem problem; | 
|  | for (int i = 0; i < kNumObservations; ++i) { | 
|  | CostFunction* cost_function = | 
|  | new AutoDiffCostFunction<ExponentialResidual, 1, 1, 1>( | 
|  | new ExponentialResidual(data[2 * i], data[2 * i + 1])); | 
|  | problem.AddResidualBlock(cost_function, NULL, &m, &c); | 
|  | } | 
|  |  | 
|  | Compiling and running `examples/curve_fitting.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/curve_fitting.cc>`_ | 
|  | gives us: | 
|  |  | 
|  | .. code-block:: bash | 
|  |  | 
|  | 0: f: 1.211734e+02 d: 0.00e+00 g: 3.61e+02 h: 0.00e+00 rho: 0.00e+00 mu: 1.00e+04 li:  0 it: 0.00e+00 tt: 0.00e+00 | 
|  | 1: f: 1.211734e+02 d:-2.21e+03 g: 3.61e+02 h: 7.52e-01 rho:-1.87e+01 mu: 5.00e+03 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 2: f: 1.211734e+02 d:-2.21e+03 g: 3.61e+02 h: 7.51e-01 rho:-1.86e+01 mu: 1.25e+03 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 3: f: 1.211734e+02 d:-2.19e+03 g: 3.61e+02 h: 7.48e-01 rho:-1.85e+01 mu: 1.56e+02 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 4: f: 1.211734e+02 d:-2.02e+03 g: 3.61e+02 h: 7.22e-01 rho:-1.70e+01 mu: 9.77e+00 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 5: f: 1.211734e+02 d:-7.34e+02 g: 3.61e+02 h: 5.78e-01 rho:-6.32e+00 mu: 3.05e-01 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 6: f: 3.306595e+01 d: 8.81e+01 g: 4.10e+02 h: 3.18e-01 rho: 1.37e+00 mu: 9.16e-01 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 7: f: 6.426770e+00 d: 2.66e+01 g: 1.81e+02 h: 1.29e-01 rho: 1.10e+00 mu: 2.75e+00 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 8: f: 3.344546e+00 d: 3.08e+00 g: 5.51e+01 h: 3.05e-02 rho: 1.03e+00 mu: 8.24e+00 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 9: f: 1.987485e+00 d: 1.36e+00 g: 2.33e+01 h: 8.87e-02 rho: 9.94e-01 mu: 2.47e+01 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 10: f: 1.211585e+00 d: 7.76e-01 g: 8.22e+00 h: 1.05e-01 rho: 9.89e-01 mu: 7.42e+01 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 11: f: 1.063265e+00 d: 1.48e-01 g: 1.44e+00 h: 6.06e-02 rho: 9.97e-01 mu: 2.22e+02 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 12: f: 1.056795e+00 d: 6.47e-03 g: 1.18e-01 h: 1.47e-02 rho: 1.00e+00 mu: 6.67e+02 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | 13: f: 1.056751e+00 d: 4.39e-05 g: 3.79e-03 h: 1.28e-03 rho: 1.00e+00 mu: 2.00e+03 li:  1 it: 0.00e+00 tt: 0.00e+00 | 
|  | Ceres Solver Report: Iterations: 13, Initial cost: 1.211734e+02, Final cost: 1.056751e+00, Termination: FUNCTION_TOLERANCE. | 
|  | Initial m: 0 c: 0 | 
|  | Final   m: 0.291861 c: 0.131439 | 
|  |  | 
|  |  | 
|  | Starting from parameter values :math:`m = 0, c=0` with an initial | 
|  | objective function value of :math:`121.173` Ceres finds a solution | 
|  | :math:`m= 0.291861, c = 0.131439` with an objective function value of | 
|  | :math:`1.05675`. These values are a a bit different than the | 
|  | parameters of the original model :math:`m=0.3, c= 0.1`, but this is | 
|  | expected. When reconstructing a curve from noisy data, we expect to | 
|  | see such deviations. Indeed, if you were to evaluate the objective | 
|  | function for :math:`m=0.3, c=0.1`, the fit is worse with an objective | 
|  | function value of :math:`1.082425`.  The figure below illustrates the fit. | 
|  |  | 
|  | .. figure:: least_squares_fit.png | 
|  | :figwidth: 500px | 
|  | :height: 400px | 
|  | :align: center | 
|  |  | 
|  | Least squares curve fitting. | 
|  |  | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f6] `examples/curve_fitting.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/curve_fitting.cc>`_ | 
|  |  | 
|  |  | 
|  | Robust Curve Fitting | 
|  | ===================== | 
|  |  | 
|  | Now suppose the data we are given has some outliers, i.e., we have | 
|  | some points that do not obey the noise model. If we were to use the | 
|  | code above to fit such data, we would get a fit that looks as | 
|  | below. Notice how the fitted curve deviates from the ground truth. | 
|  |  | 
|  | .. figure:: non_robust_least_squares_fit.png | 
|  | :figwidth: 500px | 
|  | :height: 400px | 
|  | :align: center | 
|  |  | 
|  | To deal with outliers, a standard technique is to use a | 
|  | :class:`LossFunction`. Loss functions, reduce the influence of | 
|  | residual blocks with high residuals, usually the ones corresponding to | 
|  | outliers. To associate a loss function in a residual block, we change | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | problem.AddResidualBlock(cost_function, NULL , &m, &c); | 
|  |  | 
|  | to | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | problem.AddResidualBlock(cost_function, new CauchyLoss(0.5) , &m, &c); | 
|  |  | 
|  | :class:`CauchyLoss` is one of the loss functions that ships with Ceres | 
|  | Solver. The argument :math:`0.5` specifies the scale of the loss | 
|  | function. As a result, we get the fit below [#f7]_. Notice how the | 
|  | fitted curve moves back closer to the ground truth curve. | 
|  |  | 
|  | .. figure:: robust_least_squares_fit.png | 
|  | :figwidth: 500px | 
|  | :height: 400px | 
|  | :align: center | 
|  |  | 
|  | Using :class:`LossFunction` to reduce the effect of outliers on a | 
|  | least squares fit. | 
|  |  | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f7] `examples/robust_curve_fitting.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/robust_curve_fitting.cc>`_ | 
|  |  | 
|  |  | 
|  | Bundle Adjustment | 
|  | ================= | 
|  |  | 
|  | One of the main reasons for writing Ceres was our need to solve large | 
|  | scale bundle adjustment problems [HartleyZisserman]_, [Triggs]_. | 
|  |  | 
|  | Given a set of measured image feature locations and correspondences, | 
|  | the goal of bundle adjustment is to find 3D point positions and camera | 
|  | parameters that minimize the reprojection error. This optimization | 
|  | problem is usually formulated as a non-linear least squares problem, | 
|  | where the error is the squared :math:`L_2` norm of the difference between | 
|  | the observed feature location and the projection of the corresponding | 
|  | 3D point on the image plane of the camera. Ceres has extensive support | 
|  | for solving bundle adjustment problems. | 
|  |  | 
|  | Let us solve a problem from the `BAL | 
|  | <http://grail.cs.washington.edu/projects/bal/>`_ dataset [#f8]_. | 
|  |  | 
|  | The first step as usual is to define a templated functor that computes | 
|  | the reprojection error/residual. The structure of the functor is | 
|  | similar to the ``ExponentialResidual``, in that there is an | 
|  | instance of this object responsible for each image observation. | 
|  |  | 
|  | Each residual in a BAL problem depends on a three dimensional point | 
|  | and a nine parameter camera. The nine parameters defining the camera | 
|  | can are: Three for rotation as a Rodriquez axis-angle vector, three | 
|  | for translation, one for focal length and two for radial distortion. | 
|  | The details of this camera model can be found the `Bundler homepage | 
|  | <http://phototour.cs.washington.edu/bundler/>`_ and the `BAL homepage | 
|  | <http://grail.cs.washington.edu/projects/bal/>`_. | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | struct SnavelyReprojectionError { | 
|  | SnavelyReprojectionError(double observed_x, double observed_y) | 
|  | : observed_x(observed_x), observed_y(observed_y) {} | 
|  |  | 
|  | template <typename T> | 
|  | bool operator()(const T* const camera, | 
|  | const T* const point, | 
|  | T* residuals) const { | 
|  | // camera[0,1,2] are the angle-axis rotation. | 
|  | T p[3]; | 
|  | ceres::AngleAxisRotatePoint(camera, point, p); | 
|  | // camera[3,4,5] are the translation. | 
|  | p[0] += camera[3]; p[1] += camera[4]; p[2] += camera[5]; | 
|  |  | 
|  | // Compute the center of distortion. The sign change comes from | 
|  | // the camera model that Noah Snavely's Bundler assumes, whereby | 
|  | // the camera coordinate system has a negative z axis. | 
|  | T xp = - p[0] / p[2]; | 
|  | T yp = - p[1] / p[2]; | 
|  |  | 
|  | // Apply second and fourth order radial distortion. | 
|  | const T& l1 = camera[7]; | 
|  | const T& l2 = camera[8]; | 
|  | T r2 = xp*xp + yp*yp; | 
|  | T distortion = T(1.0) + r2  * (l1 + l2  * r2); | 
|  |  | 
|  | // Compute final projected point position. | 
|  | const T& focal = camera[6]; | 
|  | T predicted_x = focal * distortion * xp; | 
|  | T predicted_y = focal * distortion * yp; | 
|  |  | 
|  | // The error is the difference between the predicted and observed position. | 
|  | residuals[0] = predicted_x - T(observed_x); | 
|  | residuals[1] = predicted_y - T(observed_y); | 
|  | return true; | 
|  | } | 
|  |  | 
|  | // Factory to hide the construction of the CostFunction object from | 
|  | // the client code. | 
|  | static ceres::CostFunction* Create(const double observed_x, | 
|  | const double observed_y) { | 
|  | return (new ceres::AutoDiffCostFunction<SnavelyReprojectionError, 2, 9, 3>( | 
|  | new SnavelyReprojectionError(observed_x, observed_y))); | 
|  | } | 
|  |  | 
|  | double observed_x; | 
|  | double observed_y; | 
|  | }; | 
|  |  | 
|  |  | 
|  | Note that unlike the examples before, this is a non-trivial function | 
|  | and computing its analytic Jacobian is a bit of a pain. Automatic | 
|  | differentiation makes life much simpler. The function | 
|  | :func:`AngleAxisRotatePoint` and other functions for manipulating | 
|  | rotations can be found in ``include/ceres/rotation.h``. | 
|  |  | 
|  | Given this functor, the bundle adjustment problem can be constructed | 
|  | as follows: | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | ceres::Problem problem; | 
|  | for (int i = 0; i < bal_problem.num_observations(); ++i) { | 
|  | ceres::CostFunction* cost_function = | 
|  | new ceres::AutoDiffCostFunction<SnavelyReprojectionError, 2, 9, 3>( | 
|  | new SnavelyReprojectionError( | 
|  | bal_problem.observations()[2 * i + 0], | 
|  | bal_problem.observations()[2 * i + 1])); | 
|  | problem.AddResidualBlock(cost_function, | 
|  | NULL /* squared loss */, | 
|  | bal_problem.mutable_camera_for_observation(i), | 
|  | bal_problem.mutable_point_for_observation(i)); | 
|  | } | 
|  |  | 
|  |  | 
|  | Notice that the problem construction for bundle adjustment is very | 
|  | similar to the curve fitting example -- one term is added to the | 
|  | objective function per observation. | 
|  |  | 
|  | Since this large sparse problem (well large for ``DENSE_QR`` anyways), | 
|  | one way to solve this problem is to set | 
|  | :member:`Solver::Options::linear_solver_type` to | 
|  | ``SPARSE_NORMAL_CHOLESKY`` and call :member:`Solve`. And while this is | 
|  | a reasonable thing to do, bundle adjustment problems have a special | 
|  | sparsity structure that can be exploited to solve them much more | 
|  | efficiently. Ceres provides three specialized solvers (collectively | 
|  | known as Schur-based solvers) for this task. The example code uses the | 
|  | simplest of them ``DENSE_SCHUR``. | 
|  |  | 
|  | .. code-block:: c++ | 
|  |  | 
|  | ceres::Solver::Options options; | 
|  | options.linear_solver_type = ceres::DENSE_SCHUR; | 
|  | options.minimizer_progress_to_stdout = true; | 
|  | ceres::Solver::Summary summary; | 
|  | ceres::Solve(options, &problem, &summary); | 
|  | std::cout << summary.FullReport() << "\n"; | 
|  |  | 
|  | For a more sophisticated bundle adjustment example which demonstrates | 
|  | the use of Ceres' more advanced features including its various linear | 
|  | solvers, robust loss functions and local parameterizations see | 
|  | `examples/bundle_adjuster.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/bundle_adjuster.cc>`_ | 
|  |  | 
|  |  | 
|  | .. rubric:: Footnotes | 
|  |  | 
|  | .. [#f8] `examples/simple_bundle_adjuster.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/simple_bundle_adjuster.cc>`_ | 
|  |  | 
|  |  | 
|  | Other Examples | 
|  | ============== | 
|  |  | 
|  | Besides the examples in this chapter, the  `example | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/>`_ | 
|  | directory contains a number of other examples: | 
|  |  | 
|  | #. `bundle_adjuster.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/bundle_adjuster.cc>`_ | 
|  | shows how to use the various features of Ceres to solve bundle | 
|  | adjustment problems. | 
|  |  | 
|  | #. `circle_fit.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/circle_fit.cc>`_ | 
|  | shows how to fit data to a circle. | 
|  |  | 
|  | #. `denoising.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/denoising.cc>`_ | 
|  | implements image denoising using the `Fields of Experts | 
|  | <http://www.gris.informatik.tu-darmstadt.de/~sroth/research/foe/index.html>`_ | 
|  | model. | 
|  |  | 
|  | #. `nist.cc | 
|  | <https://ceres-solver.googlesource.com/ceres-solver/+/master/examples/nist.cc>`_ | 
|  | implements and attempts to solves the `NIST | 
|  | <http://www.itl.nist.gov/div898/strd/nls/nls_main.shtm>`_ | 
|  | non-linear regression problems. | 
|  |  | 
|  |  |