uniform_vector.cpp
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00034 
00035 /* Author: Wim Meeussen */
00036 
00037 #include "people_tracking_filter/uniform_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 UniformVector::UniformVector(const Vector3& mu, const Vector3& size)
00047   : Pdf<Vector3> (1),
00048     mu_(mu),
00049     size_(size)
00050 {
00051   for (unsigned int i = 0; i < 3; i++)
00052     assert(size_[i] > 0);
00053 
00054   probability_ = 1 / (size_[0] * 2 * size_[1] * 2 * size_[2] * 2);
00055 }
00056 
00057 
00058 UniformVector::~UniformVector() {}
00059 
00060 UniformVector* UniformVector::Clone() const
00061 {
00062   return new UniformVector(mu_, size_);
00063 }
00064 
00065 std::ostream& operator<< (std::ostream& os, const UniformVector& g)
00066 {
00067   os << "Mu   :\n" << g.ExpectedValueGet() << endl
00068      << "Size :\n" << g.CovarianceGet() << endl;
00069   return os;
00070 }
00071 
00072 
00073 
00074 Probability UniformVector::ProbabilityGet(const Vector3& input) const
00075 {
00076   for (unsigned int i = 0; i < 3; i++)
00077   {
00078     if (input[i] < (mu_[0] - (size_[0]))) return 0;
00079     if (input[i] > (mu_[0] + (size_[0]))) return 0;
00080   }
00081   return probability_;
00082 }
00083 
00084 
00085 bool
00086 UniformVector::SampleFrom(vector<Sample<Vector3> >& list_samples, const int num_samples, int method, void * args) const
00087 {
00088   list_samples.resize(num_samples);
00089   vector<Sample<Vector3> >::iterator sample_it = list_samples.begin();
00090   for (sample_it = list_samples.begin(); sample_it != list_samples.end(); sample_it++)
00091     SampleFrom(*sample_it, method, args);
00092 
00093   return true;
00094 }
00095 
00096 
00097 bool
00098 UniformVector::SampleFrom(Sample<Vector3>& one_sample, int method, void * args) const
00099 {
00100   one_sample.ValueSet(Vector3(((runif() - 0.5) * 2 * size_[0]) + mu_[0],
00101                               ((runif() - 0.5) * 2 * size_[1]) + mu_[1],
00102                               ((runif() - 0.5) * 2 * size_[2]) + mu_[2]));
00103   return true;
00104 }
00105 
00106 
00107 Vector3
00108 UniformVector::ExpectedValueGet() const
00109 {
00110   return mu_;
00111 }
00112 
00113 SymmetricMatrix
00114 UniformVector::CovarianceGet() const
00115 {
00116   SymmetricMatrix sigma(3);
00117   sigma = 0;
00118   for (unsigned int i = 0; i < 3; i++)
00119     sigma(i + 1, i + 1) = pow(size_[i], 2);
00120   return sigma;
00121 }
00122 
00123 } // End namespace BFL


people_tracking_filter
Author(s): Caroline Pantofaru
autogenerated on Sat Jun 8 2019 18:40:22