478 lines
14 KiB
C++
478 lines
14 KiB
C++
/**
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* @file NonlinearFactor.h
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* @brief Non-linear factor class
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* @author Frank Dellaert
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* @author Richard Roberts
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*/
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// \callgraph
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#pragma once
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#include <list>
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#include <limits>
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#include <boost/shared_ptr.hpp>
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#include <boost/serialization/base_object.hpp>
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#include "Factor.h"
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#include "Vector.h"
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#include "Matrix.h"
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#include "SharedGaussian.h"
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#include "GaussianFactor.h"
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#define INSTANTIATE_NONLINEAR_FACTOR1(C,J,X) \
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template class gtsam::NonlinearFactor1<C,J,X>;
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#define INSTANTIATE_NONLINEAR_FACTOR2(C,J1,X1,J2,X2) \
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template class gtsam::NonlinearFactor2<C,J1,X1,J2,X2>;
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namespace gtsam {
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/**
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* Nonlinear factor which assumes zero-mean Gaussian noise on the
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* on a measurement predicted by a non-linear function h.
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*
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* Templated on a configuration type. The configurations are typically
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* more general than just vectors, e.g., Rot3 or Pose3,
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* which are objects in non-linear manifolds (Lie groups).
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*/
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template<class Config>
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class NonlinearFactor: public Factor<Config> {
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protected:
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typedef NonlinearFactor<Config> This;
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SharedGaussian noiseModel_; /** Noise model */
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std::list<Symbol> keys_; /** cached keys */
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public:
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/** Default constructor for I/O only */
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NonlinearFactor() {
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}
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/**
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* Constructor
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* @param noiseModel shared pointer to a noise model
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*/
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NonlinearFactor(const SharedGaussian& noiseModel) :
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noiseModel_(noiseModel) {
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}
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/** print */
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void print(const std::string& s = "") const {
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std::cout << "NonlinearFactor " << s << std::endl;
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noiseModel_->print("noise model");
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}
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/** Check if two NonlinearFactor objects are equal */
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bool equals(const Factor<Config>& f, double tol = 1e-9) const {
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const This* p = dynamic_cast<const NonlinearFactor<Config>*> (&f);
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if (p == NULL) return false;
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return noiseModel_->equals(*p->noiseModel_, tol);
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}
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/**
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* calculate the error of the factor
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* Override for systems with unusual noise models
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*/
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virtual double error(const Config& c) const {
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return 0.5 * noiseModel_->Mahalanobis(unwhitenedError(c));
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}
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/** return keys */
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std::list<Symbol> keys() const {
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return keys_;
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}
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/* return the begin iterator of keys */
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std::list<Symbol>::const_iterator begin() const { return keys_.begin(); }
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/* return the end iterator of keys */
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std::list<Symbol>::const_iterator end() const { return keys_.end(); }
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/** access to the noise model */
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SharedGaussian get_noiseModel() const {
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return noiseModel_;
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}
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/** get the size of the factor */
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std::size_t size() const {
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return keys_.size();
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}
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/** Vector of errors, unwhitened ! */
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virtual Vector unwhitenedError(const Config& c) const = 0;
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/** Vector of errors, whitened ! */
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Vector whitenedError(const Config& c) const {
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return noiseModel_->whiten(unwhitenedError(c));
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}
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/** linearize to a GaussianFactor */
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virtual boost::shared_ptr<GaussianFactor>
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linearize(const Config& c) const = 0;
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private:
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/** Serialization function */
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friend class boost::serialization::access;
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template<class Archive>
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void serialize(Archive & ar, const unsigned int version) {
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// TODO NoiseModel
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}
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}; // NonlinearFactor
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/**
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* A Gaussian nonlinear factor that takes 1 parameter
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* implementing the density P(z|x) \propto exp -0.5*|z-h(x)|^2_C
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* Templated on the parameter type X and the configuration Config
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* There is no return type specified for h(x). Instead, we require
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* the derived class implements error_vector(c) = h(x)-z \approx Ax-b
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* This allows a graph to have factors with measurements of mixed type.
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*/
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template<class Config, class Key, class X>
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class NonlinearFactor1: public NonlinearFactor<Config> {
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protected:
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// The value of the key. Not const to allow serialization
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Key key_;
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typedef NonlinearFactor<Config> Base;
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typedef NonlinearFactor1<Config, Key, X> This;
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public:
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/** Default constructor for I/O only */
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NonlinearFactor1() {
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}
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inline const Key& key() const {
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return key_;
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}
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/**
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* Constructor
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* @param z measurement
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* @param key by which to look up X value in Config
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*/
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NonlinearFactor1(const SharedGaussian& noiseModel,
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const Key& key1) :
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Base(noiseModel), key_(key1) {
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this->keys_.push_back(key_);
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}
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/* print */
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void print(const std::string& s = "") const {
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std::cout << "NonlinearFactor1 " << s << std::endl;
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std::cout << "key: " << (std::string) key_ << std::endl;
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Base::print("parent");
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}
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/** Check if two factors are equal. Note type is Factor and needs cast. */
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bool equals(const Factor<Config>& f, double tol = 1e-9) const {
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const This* p = dynamic_cast<const This*> (&f);
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if (p == NULL) return false;
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return Base::equals(*p, tol) && (key_ == p->key_);
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}
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/** error function h(x)-z, unwhitened !!! */
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inline Vector unwhitenedError(const Config& x) const {
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const Key& j = key_;
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const X& xj = x[j];
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return evaluateError(xj);
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}
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/**
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* Linearize a non-linearFactor1 to get a GaussianFactor
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* Ax-b \approx h(x0+dx)-z = h(x0) + A*dx - z
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* Hence b = z - h(x0) = - error_vector(x)
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*/
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virtual boost::shared_ptr<GaussianFactor> linearize(const Config& x) const {
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const X& xj = x[key_];
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Matrix A;
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Vector b = - evaluateError(xj, A);
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// TODO pass unwhitened + noise model to Gaussian factor
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SharedDiagonal constrained =
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boost::shared_dynamic_cast<noiseModel::Constrained>(this->noiseModel_);
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if (constrained.get() != NULL) {
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return GaussianFactor::shared_ptr(new GaussianFactor(key_, A, b, constrained));
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}
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this->noiseModel_->WhitenInPlace(A);
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this->noiseModel_->whitenInPlace(b);
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return GaussianFactor::shared_ptr(new GaussianFactor(key_, A, b,
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noiseModel::Unit::Create(b.size())));
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}
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/*
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* Override this method to finish implementing a unary factor.
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* If the optional Matrix reference argument is specified, it should compute
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* both the function evaluation and its derivative in X.
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*/
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virtual Vector evaluateError(const X& x, boost::optional<Matrix&> H =
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boost::none) const = 0;
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private:
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/** Serialization function */
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friend class boost::serialization::access;
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template<class Archive>
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void serialize(Archive & ar, const unsigned int version) {
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ar & boost::serialization::make_nvp("NonlinearFactor",
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boost::serialization::base_object<NonlinearFactor>(*this));
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ar & BOOST_SERIALIZATION_NVP(key_);
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}
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};
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/**
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* A Gaussian nonlinear factor that takes 2 parameters
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* Note: cannot be serialized as contains function pointers
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* Specialized derived classes could do this
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*/
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template<class Config, class Key1, class X1, class Key2, class X2>
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class NonlinearFactor2: public NonlinearFactor<Config> {
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protected:
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// The values of the keys. Not const to allow serialization
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Key1 key1_;
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Key2 key2_;
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typedef NonlinearFactor<Config> Base;
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typedef NonlinearFactor2<Config, Key1, X1, Key2, X2> This;
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public:
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/**
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* Default Constructor for I/O
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*/
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NonlinearFactor2() {
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}
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/**
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* Constructor
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* @param j1 key of the first variable
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* @param j2 key of the second variable
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*/
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NonlinearFactor2(const SharedGaussian& noiseModel, Key1 j1,
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Key2 j2) :
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Base(noiseModel), key1_(j1), key2_(j2) {
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this->keys_.push_back(key1_);
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this->keys_.push_back(key2_);
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}
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/** Print */
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void print(const std::string& s = "") const {
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std::cout << "NonlinearFactor2 " << s << std::endl;
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std::cout << "key1: " << (std::string) key1_ << std::endl;
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std::cout << "key2: " << (std::string) key2_ << std::endl;
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Base::print("parent");
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}
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/** Check if two factors are equal */
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bool equals(const Factor<Config>& f, double tol = 1e-9) const {
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const This* p = dynamic_cast<const This*> (&f);
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if (p == NULL) return false;
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return Base::equals(*p, tol) && (key1_ == p->key1_)
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&& (key2_ == p->key2_);
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}
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/** error function z-h(x1,x2) */
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inline Vector unwhitenedError(const Config& x) const {
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const X1& x1 = x[key1_];
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const X2& x2 = x[key2_];
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return evaluateError(x1, x2);
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}
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/**
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* Linearize a non-linearFactor2 to get a GaussianFactor
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* Ax-b \approx h(x1+dx1,x2+dx2)-z = h(x1,x2) + A2*dx1 + A2*dx2 - z
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* Hence b = z - h(x1,x2) = - error_vector(x)
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*/
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boost::shared_ptr<GaussianFactor> linearize(const Config& c) const {
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const X1& x1 = c[key1_];
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const X2& x2 = c[key2_];
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Matrix A1, A2;
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Vector b = -evaluateError(x1, x2, A1, A2);
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// TODO pass unwhitened + noise model to Gaussian factor
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SharedDiagonal constrained =
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boost::shared_dynamic_cast<noiseModel::Constrained>(this->noiseModel_);
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if (constrained.get() != NULL) {
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return GaussianFactor::shared_ptr(new GaussianFactor(key1_, A1, key2_,
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A2, b, constrained));
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}
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this->noiseModel_->WhitenInPlace(A1);
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this->noiseModel_->WhitenInPlace(A2);
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this->noiseModel_->whitenInPlace(b);
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return GaussianFactor::shared_ptr(new GaussianFactor(key1_, A1, key2_,
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A2, b, noiseModel::Unit::Create(b.size())));
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}
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/** methods to retrieve both keys */
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inline const Key1& key1() const {
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return key1_;
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}
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inline const Key2& key2() const {
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return key2_;
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}
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/*
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* Override this method to finish implementing a binary factor.
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* If any of the optional Matrix reference arguments are specified, it should compute
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* both the function evaluation and its derivative(s) in X1 (and/or X2).
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*/
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virtual Vector
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evaluateError(const X1&, const X2&, boost::optional<Matrix&> H1 =
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boost::none, boost::optional<Matrix&> H2 = boost::none) const = 0;
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private:
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/** Serialization function */
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friend class boost::serialization::access;
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template<class Archive>
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void serialize(Archive & ar, const unsigned int version) {
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ar & boost::serialization::make_nvp("NonlinearFactor",
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boost::serialization::base_object<NonlinearFactor>(*this));
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ar & BOOST_SERIALIZATION_NVP(key1_);
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ar & BOOST_SERIALIZATION_NVP(key2_);
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}
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};
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/* ************************************************************************* */
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/**
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* A Gaussian nonlinear factor that takes 3 parameters
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* Note: cannot be serialized as contains function pointers
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* Specialized derived classes could do this
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*/
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template<class Config, class Key1, class X1, class Key2, class X2, class Key3, class X3>
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class NonlinearFactor3: public NonlinearFactor<Config> {
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protected:
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// The values of the keys. Not const to allow serialization
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Key1 key1_;
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Key2 key2_;
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Key3 key3_;
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typedef NonlinearFactor<Config> Base;
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typedef NonlinearFactor3<Config, Key1, X1, Key2, X2, Key3, X3> This;
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public:
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/**
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* Default Constructor for I/O
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*/
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NonlinearFactor3() {
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}
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/**
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* Constructor
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* @param j1 key of the first variable
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* @param j2 key of the second variable
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* @param j3 key of the third variable
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*/
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NonlinearFactor3(const SharedGaussian& noiseModel, Key1 j1, Key2 j2, Key3 j3) :
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Base(noiseModel), key1_(j1), key2_(j2), key3_(j3) {
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this->keys_.push_back(key1_);
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this->keys_.push_back(key2_);
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this->keys_.push_back(key3_);
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}
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/** Print */
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void print(const std::string& s = "") const {
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std::cout << "NonlinearFactor2 " << s << std::endl;
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std::cout << "key1: " << (std::string) key1_ << std::endl;
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std::cout << "key2: " << (std::string) key2_ << std::endl;
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std::cout << "key3: " << (std::string) key3_ << std::endl;
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Base::print("parent");
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}
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/** Check if two factors are equal */
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bool equals(const Factor<Config>& f, double tol = 1e-9) const {
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const This* p = dynamic_cast<const This*> (&f);
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if (p == NULL) return false;
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return Base::equals(*p, tol) && (key1_ == p->key1_)
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&& (key2_ == p->key2_) && (key3_ == p->key3_);
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}
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/** error function z-h(x1,x2) */
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inline Vector unwhitenedError(const Config& x) const {
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const X1& x1 = x[key1_];
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const X2& x2 = x[key2_];
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const X3& x3 = x[key3_];
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return evaluateError(x1, x2, x3);
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}
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/**
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* Linearize a non-linearFactor2 to get a GaussianFactor
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* Ax-b \approx h(x1+dx1,x2+dx2,x3+dx3)-z = h(x1,x2,x3) + A2*dx1 + A2*dx2 + A3*dx3 - z
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* Hence b = z - h(x1,x2,x3) = - error_vector(x)
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*/
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boost::shared_ptr<GaussianFactor> linearize(const Config& c) const {
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const X1& x1 = c[key1_];
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const X2& x2 = c[key2_];
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const X2& x3 = c[key3_];
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Matrix A1, A2, A3;
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Vector b = -evaluateError(x1, x2, x3, A1, A2, A3);
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// TODO pass unwhitened + noise model to Gaussian factor
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SharedDiagonal constrained =
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boost::shared_dynamic_cast<noiseModel::Constrained>(this->noiseModel_);
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if (constrained.get() != NULL) {
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return GaussianFactor::shared_ptr(
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new GaussianFactor(key1_, A1, key2_, A2, key3_, A3, b, constrained));
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}
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this->noiseModel_->WhitenInPlace(A1);
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this->noiseModel_->WhitenInPlace(A2);
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this->noiseModel_->WhitenInPlace(A3);
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this->noiseModel_->whitenInPlace(b);
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return GaussianFactor::shared_ptr(
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new GaussianFactor(key1_, A1, key2_, A2, key3_, A3, b, noiseModel::Unit::Create(b.size())));
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}
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/** methods to retrieve keys */
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inline const Key1& key1() const {
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return key1_;
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}
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inline const Key2& key2() const {
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return key2_;
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}
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inline const Key3& key3() const {
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return key3_;
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}
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/*
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* Override this method to finish implementing a trinary factor.
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* If any of the optional Matrix reference arguments are specified, it should compute
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* both the function evaluation and its derivative(s) in X1 (and/or X2, X3).
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*/
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virtual Vector
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evaluateError(const X1&, const X2&, const X3&,
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boost::optional<Matrix&> H1 = boost::none,
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boost::optional<Matrix&> H2 = boost::none,
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boost::optional<Matrix&> H3 = boost::none) const = 0;
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private:
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/** Serialization function */
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friend class boost::serialization::access;
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template<class Archive>
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void serialize(Archive & ar, const unsigned int version) {
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ar & boost::serialization::make_nvp("NonlinearFactor",
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boost::serialization::base_object<NonlinearFactor>(*this));
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ar & BOOST_SERIALIZATION_NVP(key1_);
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ar & BOOST_SERIALIZATION_NVP(key2_);
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}
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};
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/* ************************************************************************* */
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}
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