|  | // Ceres Solver - A fast non-linear least squares minimizer | 
|  | // Copyright 2012 Google Inc. All rights reserved. | 
|  | // http://code.google.com/p/ceres-solver/ | 
|  | // | 
|  | // Redistribution and use in source and binary forms, with or without | 
|  | // modification, are permitted provided that the following conditions are met: | 
|  | // | 
|  | // * Redistributions of source code must retain the above copyright notice, | 
|  | //   this list of conditions and the following disclaimer. | 
|  | // * Redistributions in binary form must reproduce the above copyright notice, | 
|  | //   this list of conditions and the following disclaimer in the documentation | 
|  | //   and/or other materials provided with the distribution. | 
|  | // * Neither the name of Google Inc. nor the names of its contributors may be | 
|  | //   used to endorse or promote products derived from this software without | 
|  | //   specific prior written permission. | 
|  | // | 
|  | // THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" | 
|  | // AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE | 
|  | // IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE | 
|  | // ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR CONTRIBUTORS BE | 
|  | // LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR | 
|  | // CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF | 
|  | // SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS | 
|  | // INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN | 
|  | // CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) | 
|  | // ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE | 
|  | // POSSIBILITY OF SUCH DAMAGE. | 
|  | // | 
|  | // Author: sameeragarwal@google.com (Sameer Agarwal) | 
|  |  | 
|  | #include "ceres/internal/eigen.h" | 
|  | #include "ceres/low_rank_inverse_hessian.h" | 
|  | #include "glog/logging.h" | 
|  |  | 
|  | namespace ceres { | 
|  | namespace internal { | 
|  |  | 
|  | LowRankInverseHessian::LowRankInverseHessian( | 
|  | int num_parameters, | 
|  | int max_num_corrections, | 
|  | bool use_approximate_eigenvalue_scaling) | 
|  | : num_parameters_(num_parameters), | 
|  | max_num_corrections_(max_num_corrections), | 
|  | use_approximate_eigenvalue_scaling_(use_approximate_eigenvalue_scaling), | 
|  | num_corrections_(0), | 
|  | approximate_eigenvalue_scale_(1.0), | 
|  | delta_x_history_(num_parameters, max_num_corrections), | 
|  | delta_gradient_history_(num_parameters, max_num_corrections), | 
|  | delta_x_dot_delta_gradient_(max_num_corrections) { | 
|  | } | 
|  |  | 
|  | bool LowRankInverseHessian::Update(const Vector& delta_x, | 
|  | const Vector& delta_gradient) { | 
|  | const double delta_x_dot_delta_gradient = delta_x.dot(delta_gradient); | 
|  | if (delta_x_dot_delta_gradient <= 1e-10) { | 
|  | VLOG(2) << "Skipping LBFGS Update, delta_x_dot_delta_gradient too small: " | 
|  | << delta_x_dot_delta_gradient; | 
|  | return false; | 
|  | } | 
|  |  | 
|  | if (num_corrections_ == max_num_corrections_) { | 
|  | // TODO(sameeragarwal): This can be done more efficiently using | 
|  | // a circular buffer/indexing scheme, but for simplicity we will | 
|  | // do the expensive copy for now. | 
|  | delta_x_history_.block(0, 0, num_parameters_, max_num_corrections_ - 1) = | 
|  | delta_x_history_ | 
|  | .block(0, 1, num_parameters_, max_num_corrections_ - 1); | 
|  |  | 
|  | delta_gradient_history_ | 
|  | .block(0, 0, num_parameters_, max_num_corrections_ - 1) = | 
|  | delta_gradient_history_ | 
|  | .block(0, 1, num_parameters_, max_num_corrections_ - 1); | 
|  |  | 
|  | delta_x_dot_delta_gradient_.head(num_corrections_ - 1) = | 
|  | delta_x_dot_delta_gradient_.tail(num_corrections_ - 1); | 
|  | } else { | 
|  | ++num_corrections_; | 
|  | } | 
|  |  | 
|  | delta_x_history_.col(num_corrections_ - 1) = delta_x; | 
|  | delta_gradient_history_.col(num_corrections_ - 1) = delta_gradient; | 
|  | delta_x_dot_delta_gradient_(num_corrections_ - 1) = | 
|  | delta_x_dot_delta_gradient; | 
|  | approximate_eigenvalue_scale_ = | 
|  | delta_x_dot_delta_gradient / delta_gradient.squaredNorm(); | 
|  | return true; | 
|  | } | 
|  |  | 
|  | void LowRankInverseHessian::RightMultiply(const double* x_ptr, | 
|  | double* y_ptr) const { | 
|  | ConstVectorRef gradient(x_ptr, num_parameters_); | 
|  | VectorRef search_direction(y_ptr, num_parameters_); | 
|  |  | 
|  | search_direction = gradient; | 
|  |  | 
|  | Vector alpha(num_corrections_); | 
|  |  | 
|  | for (int i = num_corrections_ - 1; i >= 0; --i) { | 
|  | alpha(i) = delta_x_history_.col(i).dot(search_direction) / | 
|  | delta_x_dot_delta_gradient_(i); | 
|  | search_direction -= alpha(i) * delta_gradient_history_.col(i); | 
|  | } | 
|  |  | 
|  | if (use_approximate_eigenvalue_scaling_) { | 
|  | // Rescale the initial inverse Hessian approximation (H_0) to be iteratively | 
|  | // updated so that it is of similar 'size' to the true inverse Hessian along | 
|  | // the most recent search direction.  As shown in [1]: | 
|  | // | 
|  | //   \gamma_k = (delta_gradient_{k-1}' * delta_x_{k-1}) / | 
|  | //              (delta_gradient_{k-1}' * delta_gradient_{k-1}) | 
|  | // | 
|  | // Satisfies: | 
|  | // | 
|  | //   (1 / \lambda_m) <= \gamma_k <= (1 / \lambda_1) | 
|  | // | 
|  | // Where \lambda_1 & \lambda_m are the smallest and largest eigenvalues of | 
|  | // the true Hessian (not the inverse) along the most recent search direction | 
|  | // respectively.  Thus \gamma is an approximate eigenvalue of the true | 
|  | // inverse Hessian, and choosing: H_0 = I * \gamma will yield a starting | 
|  | // point that has a similar scale to the true inverse Hessian.  This | 
|  | // technique is widely reported to often improve convergence, however this | 
|  | // is not universally true, particularly if there are errors in the initial | 
|  | // jacobians, or if there are significant differences in the sensitivity | 
|  | // of the problem to the parameters (i.e. the range of the magnitudes of | 
|  | // the components of the gradient is large). | 
|  | // | 
|  | // The original origin of this rescaling trick is somewhat unclear, the | 
|  | // earliest reference appears to be Oren [1], however it is widely discussed | 
|  | // without specific attributation in various texts including [2] (p143/178). | 
|  | // | 
|  | // [1] Oren S.S., Self-scaling variable metric (SSVM) algorithms Part II: | 
|  | //     Implementation and experiments, Management Science, | 
|  | //     20(5), 863-874, 1974. | 
|  | // [2] Nocedal J., Wright S., Numerical Optimization, Springer, 1999. | 
|  | search_direction *= approximate_eigenvalue_scale_; | 
|  | } | 
|  |  | 
|  | for (int i = 0; i < num_corrections_; ++i) { | 
|  | const double beta = delta_gradient_history_.col(i).dot(search_direction) / | 
|  | delta_x_dot_delta_gradient_(i); | 
|  | search_direction += delta_x_history_.col(i) * (alpha(i) - beta); | 
|  | } | 
|  | } | 
|  |  | 
|  | }  // namespace internal | 
|  | }  // namespace ceres |