149 lines
		
	
	
		
			5.1 KiB
		
	
	
	
		
			C++
		
	
	
			
		
		
	
	
			149 lines
		
	
	
		
			5.1 KiB
		
	
	
	
		
			C++
		
	
	
| /* ----------------------------------------------------------------------------
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| 
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|  * GTSAM Copyright 2010, Georgia Tech Research Corporation,
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|  * Atlanta, Georgia 30332-0415
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|  * All Rights Reserved
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|  * Authors: Frank Dellaert, et al. (see THANKS for the full author list)
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| 
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|  * See LICENSE for the license information
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| 
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|  * -------------------------------------------------------------------------- */
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| 
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| /**
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|  * @file PartialPriorFactor.h
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|  * @brief A simple prior factor that allows for setting a prior only on a part of linear parameters
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|  * @author Alex Cunningham
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|  */
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| 
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| #pragma once
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| 
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| #include <gtsam/nonlinear/NonlinearFactor.h>
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| #include <gtsam/base/Lie.h>
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| 
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| namespace gtsam {
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| 
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| 	/**
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| 	 * A class for a soft partial prior on any Lie type, with a mask over Expmap
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| 	 * parameters. Note that this will use Logmap() to find a tangent space parameterization
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| 	 * for the variable attached, so this may fail for highly nonlinear manifolds.
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| 	 *
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| 	 * The prior vector used in this factor is stored in compressed form, such that
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| 	 * it only contains values for measurements that are to be compared, and they are in
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| 	 * the same order as VALUE::Logmap().  The mask will determine which components to extract
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| 	 * in the error function.
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| 	 *
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| 	 * For practical use, it would be good to subclass this factor and have the class type
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| 	 * construct the mask.
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| 	 * @tparam VALUE is the type of variable the prior effects
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| 	 */
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| 	template<class VALUE>
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| 	class PartialPriorFactor: public NoiseModelFactor1<VALUE> {
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| 
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| 	public:
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| 		typedef VALUE T;
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| 
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| 	protected:
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| 
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| 		// Concept checks on the variable type - currently requires Lie
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| 		GTSAM_CONCEPT_LIE_TYPE(VALUE)
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| 
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| 		typedef NoiseModelFactor1<VALUE> Base;
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| 		typedef PartialPriorFactor<VALUE> This;
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| 
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| 		Vector prior_;             ///< measurement on tangent space parameters, in compressed form
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| 		std::vector<size_t> mask_; ///< indices of values to constrain in compressed prior vector
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| 		Matrix H_; 								 ///< Constant Jacobian - computed at creation
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| 
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| 		/** default constructor - only use for serialization */
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| 		PartialPriorFactor() {}
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| 
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| 		/**
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| 		 * constructor with just minimum requirements for a factor - allows more
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| 		 * computation in the constructor.  This should only be used by subclasses
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| 		 */
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| 		PartialPriorFactor(Key key, const SharedNoiseModel& model)
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| 		  : Base(model, key) {}
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| 
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| 	public:
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| 
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| 		virtual ~PartialPriorFactor() {}
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| 
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| 		/** Single Element Constructor: acts on a single parameter specified by idx */
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| 		PartialPriorFactor(Key key, size_t idx, double prior, const SharedNoiseModel& model) :
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| 			Base(model, key), prior_(Vector_(1, prior)), mask_(1, idx), H_(zeros(1, T::Dim())) {
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| 			assert(model->dim() == 1);
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| 			this->fillH();
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| 		}
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| 
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| 		/** Indices Constructor: specify the mask with a set of indices */
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| 		PartialPriorFactor(Key key, const std::vector<size_t>& mask, const Vector& prior,
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| 				const SharedNoiseModel& model) :
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| 			Base(model, key), prior_(prior), mask_(mask), H_(zeros(mask.size(), T::Dim())) {
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| 			assert((size_t)prior_.size() == mask.size());
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| 			assert(model->dim() == (size_t) prior.size());
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| 			this->fillH();
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| 		}
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| 
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| 		/// @return a deep copy of this factor
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|     virtual gtsam::NonlinearFactor::shared_ptr clone() const {
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| 		  return boost::static_pointer_cast<gtsam::NonlinearFactor>(
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| 		      gtsam::NonlinearFactor::shared_ptr(new This(*this))); }
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| 
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| 		/** implement functions needed for Testable */
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| 
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| 		/** print */
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| 		virtual void print(const std::string& s, const KeyFormatter& keyFormatter = DefaultKeyFormatter) const {
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| 			Base::print(s, keyFormatter);
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| 			gtsam::print(prior_, "prior");
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| 		}
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| 
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| 		/** equals */
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| 		virtual bool equals(const NonlinearFactor& expected, double tol=1e-9) const {
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| 			const This *e = dynamic_cast<const This*> (&expected);
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| 			return e != NULL && Base::equals(*e, tol) &&
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| 					gtsam::equal_with_abs_tol(this->prior_, e->prior_, tol) &&
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| 					this->mask_ == e->mask_;
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| 		}
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| 
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| 		/** implement functions needed to derive from Factor */
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| 
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| 		/** vector of errors */
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| 		Vector evaluateError(const T& p, boost::optional<Matrix&> H = boost::none) const {
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| 			if (H) (*H) = H_;
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| 			// FIXME: this was originally the generic retraction - may not produce same results
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| 			Vector full_logmap = T::Logmap(p);
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| //			Vector full_logmap = T::identity().localCoordinates(p); // Alternate implementation
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| 			Vector masked_logmap = zero(this->dim());
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| 			for (size_t i=0; i<mask_.size(); ++i)
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| 				masked_logmap(i) = full_logmap(mask_[i]);
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| 			return masked_logmap - prior_;
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| 		}
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| 
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| 		// access
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| 		const Vector& prior() const { return prior_; }
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| 		const std::vector<bool>& mask() const { return  mask_; }
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| 		const Matrix& H() const { return H_; }
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| 
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| 	protected:
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| 
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| 		/** Constructs the jacobian matrix in place */
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| 		void fillH() {
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| 			for (size_t i=0; i<mask_.size(); ++i)
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| 				H_(i, mask_[i]) = 1.0;
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| 		}
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| 
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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("NoiseModelFactor1",
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| 					boost::serialization::base_object<Base>(*this));
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| 			ar & BOOST_SERIALIZATION_NVP(prior_);
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| 			ar & BOOST_SERIALIZATION_NVP(mask_);
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| 			ar & BOOST_SERIALIZATION_NVP(H_);
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| 		}
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| 	}; // \class PartialPriorFactor
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| 
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| } /// namespace gtsam
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