| // Ceres Solver - A fast non-linear least squares minimizer | |
| // Copyright 2019 Google Inc. All rights reserved. | |
| // http://ceres-solver.org/ | |
| // | |
| // 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 | |
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| // 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) | |
| // | |
| // The LossFunction interface is the way users describe how residuals | |
| // are converted to cost terms for the overall problem cost function. | |
| // For the exact manner in which loss functions are converted to the | |
| // overall cost for a problem, see problem.h. | |
| // | |
| // For least squares problem where there are no outliers and standard | |
| // squared loss is expected, it is not necessary to create a loss | |
| // function; instead passing a nullptr to the problem when adding | |
| // residuals implies a standard squared loss. | |
| // | |
| // For least squares problems where the minimization may encounter | |
| // input terms that contain outliers, that is, completely bogus | |
| // measurements, it is important to use a loss function that reduces | |
| // their associated penalty. | |
| // | |
| // Consider a structure from motion problem. The unknowns are 3D | |
| // points and camera parameters, and the measurements are image | |
| // coordinates describing the expected reprojected position for a | |
| // point in a camera. For example, we want to model the geometry of a | |
| // street scene with fire hydrants and cars, observed by a moving | |
| // camera with unknown parameters, and the only 3D points we care | |
| // about are the pointy tippy-tops of the fire hydrants. Our magic | |
| // image processing algorithm, which is responsible for producing the | |
| // measurements that are input to Ceres, has found and matched all | |
| // such tippy-tops in all image frames, except that in one of the | |
| // frame it mistook a car's headlight for a hydrant. If we didn't do | |
| // anything special (i.e. if we used a basic quadratic loss), the | |
| // residual for the erroneous measurement will result in extreme error | |
| // due to the quadratic nature of squared loss. This results in the | |
| // entire solution getting pulled away from the optimum to reduce | |
| // the large error that would otherwise be attributed to the wrong | |
| // measurement. | |
| // | |
| // Using a robust loss function, the cost for large residuals is | |
| // reduced. In the example above, this leads to outlier terms getting | |
| // downweighted so they do not overly influence the final solution. | |
| // | |
| // What cost function is best? | |
| // | |
| // In general, there isn't a principled way to select a robust loss | |
| // function. The authors suggest starting with a non-robust cost, then | |
| // only experimenting with robust loss functions if standard squared | |
| // loss doesn't work. | |
| namespace ceres { | |
| class CERES_EXPORT LossFunction { | |
| public: | |
| virtual ~LossFunction(); | |
| // For a residual vector with squared 2-norm 'sq_norm', this method | |
| // is required to fill in the value and derivatives of the loss | |
| // function (rho in this example): | |
| // | |
| // out[0] = rho(sq_norm), | |
| // out[1] = rho'(sq_norm), | |
| // out[2] = rho''(sq_norm), | |
| // | |
| // Here the convention is that the contribution of a term to the | |
| // cost function is given by 1/2 rho(s), where | |
| // | |
| // s = ||residuals||^2. | |
| // | |
| // Calling the method with a negative value of 's' is an error and | |
| // the implementations are not required to handle that case. | |
| // | |
| // Most sane choices of rho() satisfy: | |
| // | |
| // rho(0) = 0, | |
| // rho'(0) = 1, | |
| // rho'(s) < 1 in outlier region, | |
| // rho''(s) < 0 in outlier region, | |
| // | |
| // so that they mimic the least squares cost for small residuals. | |
| virtual void Evaluate(double sq_norm, double out[3]) const = 0; | |
| }; | |
| // Some common implementations follow below. | |
| // | |
| // Note: in the region of interest (i.e. s < 3) we have: | |
| // TrivialLoss >= HuberLoss >= SoftLOneLoss >= CauchyLoss | |
| // This corresponds to no robustification. | |
| // | |
| // rho(s) = s | |
| // | |
| // At s = 0: rho = [0, 1, 0]. | |
| // | |
| // It is not normally necessary to use this, as passing nullptr for the | |
| // loss function when building the problem accomplishes the same | |
| // thing. | |
| class CERES_EXPORT TrivialLoss final : public LossFunction { | |
| public: | |
| void Evaluate(double, double*) const override; | |
| }; | |
| // Scaling | |
| // ------- | |
| // Given one robustifier | |
| // s -> rho(s) | |
| // one can change the length scale at which robustification takes | |
| // place, by adding a scale factor 'a' as follows: | |
| // | |
| // s -> a^2 rho(s / a^2). | |
| // | |
| // The first and second derivatives are: | |
| // | |
| // s -> rho'(s / a^2), | |
| // s -> (1 / a^2) rho''(s / a^2), | |
| // | |
| // but the behaviour near s = 0 is the same as the original function, | |
| // i.e. | |
| // | |
| // rho(s) = s + higher order terms, | |
| // a^2 rho(s / a^2) = s + higher order terms. | |
| // | |
| // The scalar 'a' should be positive. | |
| // | |
| // The reason for the appearance of squaring is that 'a' is in the | |
| // units of the residual vector norm whereas 's' is a squared | |
| // norm. For applications it is more convenient to specify 'a' than | |
| // its square. The commonly used robustifiers below are described in | |
| // un-scaled format (a = 1) but their implementations work for any | |
| // non-zero value of 'a'. | |
| // Huber. | |
| // | |
| // rho(s) = s for s <= 1, | |
| // rho(s) = 2 sqrt(s) - 1 for s >= 1. | |
| // | |
| // At s = 0: rho = [0, 1, 0]. | |
| // | |
| // The scaling parameter 'a' corresponds to 'delta' on this page: | |
| // http://en.wikipedia.org/wiki/Huber_Loss_Function | |
| class CERES_EXPORT HuberLoss final : public LossFunction { | |
| public: | |
| explicit HuberLoss(double a) : a_(a), b_(a * a) {} | |
| void Evaluate(double, double*) const override; | |
| private: | |
| const double a_; | |
| // b = a^2. | |
| const double b_; | |
| }; | |
| // Soft L1, similar to Huber but smooth. | |
| // | |
| // rho(s) = 2 (sqrt(1 + s) - 1). | |
| // | |
| // At s = 0: rho = [0, 1, -1 / (2 * a^2)]. | |
| class CERES_EXPORT SoftLOneLoss final : public LossFunction { | |
| public: | |
| explicit SoftLOneLoss(double a) : b_(a * a), c_(1 / b_) {} | |
| void Evaluate(double, double*) const override; | |
| private: | |
| // b = a^2. | |
| const double b_; | |
| // c = 1 / a^2. | |
| const double c_; | |
| }; | |
| // Inspired by the Cauchy distribution | |
| // | |
| // rho(s) = log(1 + s). | |
| // | |
| // At s = 0: rho = [0, 1, -1 / a^2]. | |
| class CERES_EXPORT CauchyLoss final : public LossFunction { | |
| public: | |
| explicit CauchyLoss(double a) : b_(a * a), c_(1 / b_) {} | |
| void Evaluate(double, double*) const override; | |
| private: | |
| // b = a^2. | |
| const double b_; | |
| // c = 1 / a^2. | |
| const double c_; | |
| }; | |
| // Loss that is capped beyond a certain level using the arc-tangent function. | |
| // The scaling parameter 'a' determines the level where falloff occurs. | |
| // For costs much smaller than 'a', the loss function is linear and behaves like | |
| // TrivialLoss, and for values much larger than 'a' the value asymptotically | |
| // approaches the constant value of a * PI / 2. | |
| // | |
| // rho(s) = a atan(s / a). | |
| // | |
| // At s = 0: rho = [0, 1, 0]. | |
| class CERES_EXPORT ArctanLoss final : public LossFunction { | |
| public: | |
| explicit ArctanLoss(double a) : a_(a), b_(1 / (a * a)) {} | |
| void Evaluate(double, double*) const override; | |
| private: | |
| const double a_; | |
| // b = 1 / a^2. | |
| const double b_; | |
| }; | |
| // Loss function that maps to approximately zero cost in a range around the | |
| // origin, and reverts to linear in error (quadratic in cost) beyond this range. | |
| // The tolerance parameter 'a' sets the nominal point at which the | |
| // transition occurs, and the transition size parameter 'b' sets the nominal | |
| // distance over which most of the transition occurs. Both a and b must be | |
| // greater than zero, and typically b will be set to a fraction of a. | |
| // The slope rho'[s] varies smoothly from about 0 at s <= a - b to | |
| // about 1 at s >= a + b. | |
| // | |
| // The term is computed as: | |
| // | |
| // rho(s) = b log(1 + exp((s - a) / b)) - c0. | |
| // | |
| // where c0 is chosen so that rho(0) == 0 | |
| // | |
| // c0 = b log(1 + exp(-a / b) | |
| // | |
| // This has the following useful properties: | |
| // | |
| // rho(s) == 0 for s = 0 | |
| // rho'(s) ~= 0 for s << a - b | |
| // rho'(s) ~= 1 for s >> a + b | |
| // rho''(s) > 0 for all s | |
| // | |
| // In addition, all derivatives are continuous, and the curvature is | |
| // concentrated in the range a - b to a + b. | |
| // | |
| // At s = 0: rho = [0, ~0, ~0]. | |
| class CERES_EXPORT TolerantLoss final : public LossFunction { | |
| public: | |
| explicit TolerantLoss(double a, double b); | |
| void Evaluate(double, double*) const override; | |
| private: | |
| const double a_, b_, c_; | |
| }; | |
| // This is the Tukey biweight loss function which aggressively | |
| // attempts to suppress large errors. | |
| // | |
| // The term is computed as follows where the equations are scaled by a | |
| // factor of 2 because the cost function is given by 1/2 rho(s): | |
| // | |
| // rho(s) = a^2 / 3 * (1 - (1 - s / a^2)^3 ) for s <= a^2, | |
| // rho(s) = a^2 / 3 for s > a^2. | |
| // | |
| // At s = 0: rho = [0, 1, -2 / a^2] | |
| class CERES_EXPORT TukeyLoss final : public ceres::LossFunction { | |
| public: | |
| explicit TukeyLoss(double a) : a_squared_(a * a) {} | |
| void Evaluate(double, double*) const override; | |
| private: | |
| const double a_squared_; | |
| }; | |
| // Composition of two loss functions. The error is the result of first | |
| // evaluating g followed by f to yield the composition f(g(s)). | |
| // The loss functions must not be nullptr. | |
| class CERES_EXPORT ComposedLoss final : public LossFunction { | |
| public: | |
| explicit ComposedLoss(const LossFunction* f, | |
| Ownership ownership_f, | |
| const LossFunction* g, | |
| Ownership ownership_g); | |
| ~ComposedLoss() override; | |
| void Evaluate(double, double*) const override; | |
| private: | |
| std::unique_ptr<const LossFunction> f_, g_; | |
| const Ownership ownership_f_, ownership_g_; | |
| }; | |
| // The discussion above has to do with length scaling: it affects the space | |
| // in which s is measured. Sometimes you want to simply scale the output | |
| // value of the robustifier. For example, you might want to weight | |
| // different error terms differently (e.g., weight pixel reprojection | |
| // errors differently from terrain errors). | |
| // | |
| // If rho is the wrapped robustifier, then this simply outputs | |
| // s -> a * rho(s) | |
| // | |
| // The first and second derivatives are, not surprisingly | |
| // s -> a * rho'(s) | |
| // s -> a * rho''(s) | |
| // | |
| // Since we treat the a nullptr Loss function as the Identity loss | |
| // function, rho = nullptr is a valid input and will result in the input | |
| // being scaled by a. This provides a simple way of implementing a | |
| // scaled ResidualBlock. | |
| class CERES_EXPORT ScaledLoss final : public LossFunction { | |
| public: | |
| // Constructs a ScaledLoss wrapping another loss function. Takes | |
| // ownership of the wrapped loss function or not depending on the | |
| // ownership parameter. | |
| ScaledLoss(const LossFunction* rho, double a, Ownership ownership) | |
| : rho_(rho), a_(a), ownership_(ownership) {} | |
| ScaledLoss(const ScaledLoss&) = delete; | |
| void operator=(const ScaledLoss&) = delete; | |
| ~ScaledLoss() override { | |
| if (ownership_ == DO_NOT_TAKE_OWNERSHIP) { | |
| rho_.release(); | |
| } | |
| } | |
| void Evaluate(double, double*) const override; | |
| private: | |
| std::unique_ptr<const LossFunction> rho_; | |
| const double a_; | |
| const Ownership ownership_; | |
| }; | |
| // Sometimes after the optimization problem has been constructed, we | |
| // wish to mutate the scale of the loss function. For example, when | |
| // performing estimation from data which has substantial outliers, | |
| // convergence can be improved by starting out with a large scale, | |
| // optimizing the problem and then reducing the scale. This can have | |
| // better convergence behaviour than just using a loss function with a | |
| // small scale. | |
| // | |
| // This templated class allows the user to implement a loss function | |
| // whose scale can be mutated after an optimization problem has been | |
| // constructed. | |
| // | |
| // Since we treat the a nullptr Loss function as the Identity loss | |
| // function, rho = nullptr is a valid input. | |
| // | |
| // Example usage | |
| // | |
| // Problem problem; | |
| // | |
| // // Add parameter blocks | |
| // | |
| // CostFunction* cost_function = | |
| // new AutoDiffCostFunction < UW_Camera_Mapper, 2, 9, 3>( | |
| // new UW_Camera_Mapper(feature_x, feature_y)); | |
| // | |
| // LossFunctionWrapper* loss_function = new LossFunctionWrapper( | |
| // new HuberLoss(1.0), TAKE_OWNERSHIP); | |
| // | |
| // problem.AddResidualBlock(cost_function, loss_function, parameters); | |
| // | |
| // Solver::Options options; | |
| // Solger::Summary summary; | |
| // | |
| // Solve(options, &problem, &summary) | |
| // | |
| // loss_function->Reset(new HuberLoss(1.0), TAKE_OWNERSHIP); | |
| // | |
| // Solve(options, &problem, &summary) | |
| // | |
| class CERES_EXPORT LossFunctionWrapper final : public LossFunction { | |
| public: | |
| LossFunctionWrapper(LossFunction* rho, Ownership ownership) | |
| : rho_(rho), ownership_(ownership) {} | |
| LossFunctionWrapper(const LossFunctionWrapper&) = delete; | |
| void operator=(const LossFunctionWrapper&) = delete; | |
| ~LossFunctionWrapper() override { | |
| if (ownership_ == DO_NOT_TAKE_OWNERSHIP) { | |
| rho_.release(); | |
| } | |
| } | |
| void Evaluate(double sq_norm, double out[3]) const override { | |
| if (rho_.get() == nullptr) { | |
| out[0] = sq_norm; | |
| out[1] = 1.0; | |
| out[2] = 0.0; | |
| } else { | |
| rho_->Evaluate(sq_norm, out); | |
| } | |
| } | |
| void Reset(LossFunction* rho, Ownership ownership) { | |
| if (ownership_ == DO_NOT_TAKE_OWNERSHIP) { | |
| rho_.release(); | |
| } | |
| rho_.reset(rho); | |
| ownership_ = ownership; | |
| } | |
| private: | |
| std::unique_ptr<const LossFunction> rho_; | |
| Ownership ownership_; | |
| }; | |
| } // namespace ceres | |