gaussian_vector.cpp
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00034 
00035 /* Author: Wim Meeussen */
00036 
00037 #include "cob_people_tracking_filter/gaussian_vector.h"
00038 #include <wrappers/rng/rng.h>
00039 #include <cmath> 
00040 #include <cassert>
00041 
00042 using namespace tf;
00043 
00044 namespace BFL
00045 {
00046   GaussianVector::GaussianVector(const Vector3& mu, const Vector3& sigma)
00047     : Pdf<Vector3> ( 1 ),
00048       mu_(mu),
00049       sigma_(sigma),
00050       sigma_changed_(true)
00051   {
00052     for (unsigned int i=0; i<3; i++)
00053       assert(sigma[i] > 0);
00054   }
00055 
00056 
00057   GaussianVector::~GaussianVector(){}
00058 
00059 
00060   std::ostream& operator<< (std::ostream& os, const GaussianVector& g)
00061   {
00062     os << "Mu   :\n" << g.ExpectedValueGet() << endl
00063        << "Sigma:\n" << g.CovarianceGet() << endl;
00064     return os;
00065   }
00066 
00067   void GaussianVector::sigmaSet( const Vector3& sigma )
00068   {
00069     sigma_ = sigma;
00070     sigma_changed_ = true;
00071   }
00072 
00073   Probability GaussianVector::ProbabilityGet(const Vector3& input) const
00074   {
00075     if (sigma_changed_){
00076       sigma_changed_ = false;
00077       // 2 * sigma^2
00078       for (unsigned int i=0; i<3; i++)
00079         sigma_sq_[i] = 2 * sigma_[i] * sigma_[i];
00080       // sqrt
00081       sqrt_ = 1/ sqrt(M_PI*M_PI*M_PI* sigma_sq_[0] * sigma_sq_[1] * sigma_sq_[2]);
00082     }
00083 
00084     Vector3 diff = input - mu_;
00085     return sqrt_ * exp( - (diff[0]*diff[0]/sigma_sq_[0])
00086                         - (diff[1]*diff[1]/sigma_sq_[1])
00087                         - (diff[2]*diff[2]/sigma_sq_[2]) );
00088   }
00089 
00090 
00091   bool
00092   GaussianVector::SampleFrom (vector<Sample<Vector3> >& list_samples, const int num_samples, int method, void * args) const
00093   {
00094     list_samples.resize(num_samples);
00095     vector<Sample<Vector3> >::iterator sample_it = list_samples.begin();
00096     for (sample_it=list_samples.begin(); sample_it!=list_samples.end(); sample_it++)
00097       SampleFrom( *sample_it, method, args);
00098 
00099     return true;
00100   }
00101 
00102 
00103   bool
00104   GaussianVector::SampleFrom (Sample<Vector3>& one_sample, int method, void * args) const
00105   {
00106     one_sample.ValueSet( Vector3(rnorm(mu_[0], sigma_[0]), 
00107                                  rnorm(mu_[1], sigma_[1]),
00108                                  rnorm(mu_[2], sigma_[2])));
00109     return true;
00110   }
00111 
00112 
00113   Vector3
00114   GaussianVector::ExpectedValueGet (  ) const 
00115   { 
00116     return mu_;
00117   }
00118 
00119   SymmetricMatrix
00120   GaussianVector::CovarianceGet () const
00121   {
00122     SymmetricMatrix sigma(3); sigma = 0;
00123     for (unsigned int i=0; i<3; i++)
00124       sigma(i+1,i+1) = pow(sigma_[i],2);
00125     return sigma;
00126   }
00127 
00128   GaussianVector* 
00129   GaussianVector::Clone() const
00130   {
00131     return new GaussianVector(mu_, sigma_);
00132   }
00133 
00134 } // End namespace BFL


cob_people_tracking_filter
Author(s): Caroline Pantofaru, Olha Meyer
autogenerated on Mon May 6 2019 02:32:13