multivariate_gaussian.h
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34 
35 /* Author: Mrinal Kalakrishnan */
36 
37 #ifndef MULTIVARIATE_GAUSSIAN_H_
38 #define MULTIVARIATE_GAUSSIAN_H_
39 
40 #include <eigen3/Eigen/Core>
41 #include <eigen3/Eigen/Cholesky>
42 #include <boost/random/variate_generator.hpp>
43 #include <boost/random/normal_distribution.hpp>
44 #include <boost/random/mersenne_twister.hpp>
45 #include <cstdlib>
46 
47 namespace chomp
48 {
53 {
54 public:
55  template <typename Derived1, typename Derived2>
56  MultivariateGaussian(const Eigen::MatrixBase<Derived1>& mean, const Eigen::MatrixBase<Derived2>& covariance);
57 
58  template <typename Derived>
59  void sample(Eigen::MatrixBase<Derived>& output);
60 
61 private:
62  Eigen::VectorXd mean_;
63  Eigen::MatrixXd covariance_;
64  Eigen::MatrixXd covariance_cholesky_;
66  int size_;
67  boost::mt19937 rng_;
68  boost::normal_distribution<> normal_dist_;
69  boost::variate_generator<boost::mt19937, boost::normal_distribution<> > gaussian_;
70 };
71 
73 
74 template <typename Derived1, typename Derived2>
75 MultivariateGaussian::MultivariateGaussian(const Eigen::MatrixBase<Derived1>& mean,
76  const Eigen::MatrixBase<Derived2>& covariance)
77  : mean_(mean)
78  , covariance_(covariance)
79  , covariance_cholesky_(covariance_.llt().matrixL())
80  , normal_dist_(0.0, 1.0)
81  , rng_()
83 {
84  rng_.seed(rand());
85  size_ = mean.rows();
86 }
87 
88 template <typename Derived>
89 void MultivariateGaussian::sample(Eigen::MatrixBase<Derived>& output)
90 {
91  for (int i = 0; i < size_; ++i)
92  output(i) = gaussian_();
93  output = mean_ + covariance_cholesky_ * output;
94 }
95 }
96 
97 #endif /* MULTIVARIATE_GAUSSIAN_H_ */
Generates samples from a multivariate gaussian distribution.
void sample(Eigen::MatrixBase< Derived > &output)
boost::variate_generator< boost::mt19937, boost::normal_distribution<> > gaussian_
MultivariateGaussian(const Eigen::MatrixBase< Derived1 > &mean, const Eigen::MatrixBase< Derived2 > &covariance)
boost::normal_distribution normal_dist_


chomp_motion_planner
Author(s): Gil Jones , Mrinal Kalakrishnan
autogenerated on Wed Jul 10 2019 04:03:20