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Add unscented filter to nonlinear_filtering library and add associated unit test
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@ -1,10 +1,12 @@
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/*!
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* \file cubature_filter.cc
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* \brief Interface of a library with Bayesian noise statistic estimation
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* \brief Interface of a library for nonlinear tracking algorithms
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*
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* Cubature_Filter implements the functionality of the Cubature Kalman
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* Filter, which uses multidimensional cubature rules to estimate the
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* time evolution of a nonlinear system.
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* time evolution of a nonlinear system. Unscented_filter implements
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* an Unscented Kalman Filter which uses Unscented Transform rules to
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* perform a similar estimation.
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*
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* [1] I Arasaratnam and S Haykin. Cubature kalman filters. IEEE
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* Transactions on Automatic Control, 54(6):1254–1269,2009.
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@ -38,8 +40,9 @@
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* -------------------------------------------------------------------------
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*/
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#include "cubature_filter.h"
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#include "nonlinear_tracking.h"
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/***************** CUBATURE KALMAN FILTER *****************/
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Cubature_filter::Cubature_filter()
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{
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@ -113,11 +116,11 @@ void Cubature_filter::predict_sequential(const arma::vec& x_post, const arma::ma
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P_x_pred = P_x_pred + Xi_pred*Xi_pred.t();
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}
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// Estimate predicted state and error covariance
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// Compute predicted mean and error covariance
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x_pred = x_pred / ((float) np);
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P_x_pred = P_x_pred / ((float) np) - x_pred*x_pred.t() + noise_covariance;
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// Store predicted state and error covariance
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// Store predicted mean and error covariance
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x_pred_out = x_pred;
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P_x_pred_out = P_x_pred;
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}
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@ -135,7 +138,7 @@ void Cubature_filter::update_sequential(const arma::vec& z_upd, const arma::vec&
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// Generator Matrix
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arma::mat gen_one = arma::join_horiz(arma::eye(nx,nx),-1.0*arma::eye(nx,nx));
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// Evaluate predicted measurement and covariances
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// Initialize estimated predicted measurement and covariances
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arma::mat z_pred = arma::zeros(nz,1);
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arma::mat P_zz_pred = arma::zeros(nz,nz);
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arma::mat P_xz_pred = arma::zeros(nx,nz);
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@ -156,15 +159,15 @@ void Cubature_filter::update_sequential(const arma::vec& z_upd, const arma::vec&
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P_xz_pred = P_xz_pred + Xi_pred*Zi_pred.t();
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}
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// Estimate measurement covariance and cross covariances
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// Compute measurement mean, covariance and cross covariance
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z_pred = z_pred / ((float) np);
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P_zz_pred = P_zz_pred / ((float) np) - z_pred*z_pred.t() + noise_covariance;
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P_xz_pred = P_xz_pred / ((float) np) - x_pred*z_pred.t();
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// Estimate cubature Kalman gain
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// Compute cubature Kalman gain
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arma::mat W_k = P_xz_pred*arma::inv(P_zz_pred);
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// Estimate and store the updated state and error covariance
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// Compute and store the updated mean and error covariance
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x_est = x_pred + W_k*(z_upd - z_pred);
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P_x_est = P_x_pred - W_k*P_zz_pred*W_k.t();
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}
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@ -188,3 +191,180 @@ arma::mat Cubature_filter::get_P_x_est() const
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{
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return P_x_est;
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}
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/***************** END CUBATURE KALMAN FILTER *****************/
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/***************** UNSCENTED KALMAN FILTER *****************/
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Unscented_filter::Unscented_filter()
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{
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int nx = 1;
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x_pred_out = arma::zeros(nx, 1);
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P_x_pred_out = arma::eye(nx, nx) * (nx + 1);
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x_est = x_pred_out;
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P_x_est = P_x_pred_out;
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}
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Unscented_filter::Unscented_filter(int nx)
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{
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x_pred_out = arma::zeros(nx, 1);
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P_x_pred_out = arma::eye(nx, nx) * (nx + 1);
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x_est = x_pred_out;
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P_x_est = P_x_pred_out;
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}
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Unscented_filter::Unscented_filter(const arma::vec& x_pred_0, const arma::mat& P_x_pred_0)
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{
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x_pred_out = x_pred_0;
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P_x_pred_out = P_x_pred_0;
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x_est = x_pred_out;
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P_x_est = P_x_pred_out;
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}
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Unscented_filter::~Unscented_filter() = default;
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void Unscented_filter::initialize(const arma::mat& x_pred_0, const arma::mat& P_x_pred_0)
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{
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x_pred_out = x_pred_0;
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P_x_pred_out = P_x_pred_0;
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x_est = x_pred_out;
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P_x_est = P_x_pred_out;
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}
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/*
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* Perform the prediction step of the Unscented Kalman filter
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*/
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void Unscented_filter::predict_sequential(const arma::vec& x_post, const arma::mat& P_x_post, Model_Function* transition_fcn, const arma::mat& noise_covariance)
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{
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// Compute number of sigma points
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int nx = x_post.n_elem;
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int np = 2 * nx + 1;
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float alpha = 0.001;
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float kappa = 0.0;
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float beta = 2.0;
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float lambda = std::pow(alpha,2.0)*(((float) nx) + kappa) - ((float) nx);
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// Compute UT Weights
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float W0_m = lambda / (((float) nx) + lambda);
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float W0_c = lambda / (((float) nx) + lambda) + (1 - std::pow(alpha,2.0) + beta);
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float Wi_m = 1.0 / (2.0 * (((float) nx) + lambda));
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// Propagate and evaluate sigma points
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arma::mat Xi_fact = arma::zeros(nx,nx);
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arma::mat Xi_post = arma::zeros(nx,np);
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arma::mat Xi_pred = arma::zeros(nx,np);
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Xi_post.col(0) = x_post;
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Xi_pred.col(0) = (*transition_fcn)(Xi_post.col(0));
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for (uint8_t i = 1; i <= nx; i++)
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{
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Xi_fact = std::sqrt(((float) nx) + lambda) * arma::sqrtmat_sympd(P_x_post);
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Xi_post.col(i) = x_post + Xi_fact.col(i-1);
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Xi_post.col(i+nx) = x_post - Xi_fact.col(i-1);
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Xi_pred.col(i) = (*transition_fcn)(Xi_post.col(i));
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Xi_pred.col(i+nx) = (*transition_fcn)(Xi_post.col(i+nx));
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}
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// Compute predicted mean
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arma::vec x_pred = W0_m*Xi_pred.col(0) + Wi_m*arma::sum(Xi_pred.cols(1,np-1),1);
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// Compute predicted error covariance
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arma::mat P_x_pred = W0_c*((Xi_pred.col(0)-x_pred) * (Xi_pred.col(0).t()-x_pred.t()));
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for (uint8_t i = 1; i < np; i++)
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{
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P_x_pred = P_x_pred + Wi_m*((Xi_pred.col(i)-x_pred) * (Xi_pred.col(i).t()-x_pred.t()));
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}
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P_x_pred = P_x_pred + noise_covariance;
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// Store predicted mean and error covariance
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x_pred_out = x_pred;
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P_x_pred_out = P_x_pred;
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}
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/*
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* Perform the update step of the Unscented Kalman filter
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*/
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void Unscented_filter::update_sequential(const arma::vec& z_upd, const arma::vec& x_pred, const arma::mat& P_x_pred, Model_Function* measurement_fcn, const arma::mat& noise_covariance)
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{
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// Compute number of sigma points
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int nx = x_pred.n_elem;
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int nz = z_upd.n_elem;
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int np = 2 * nx + 1;
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float alpha = 0.001;
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float kappa = 0.0;
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float beta = 2.0;
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float lambda = std::pow(alpha,2.0)*(((float) nx) + kappa) - ((float) nx);
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// Compute UT Weights
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float W0_m = lambda / (((float) nx) + lambda);
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float W0_c = lambda / (((float) nx) + lambda) + (1 - std::pow(alpha,2.0) + beta);
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float Wi_m = 1.0 / (2.0 * (((float) nx) + lambda));
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// Propagate and evaluate sigma points
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arma::mat Xi_fact = arma::zeros(nx,nx);
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arma::mat Xi_pred = arma::zeros(nx,np);
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arma::mat Zi_pred = arma::zeros(nz,np);
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Xi_pred.col(0) = x_pred;
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Zi_pred.col(0) = (*measurement_fcn)(Xi_pred.col(0));
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for (uint8_t i = 1; i <= nx; i++)
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{
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Xi_fact = std::sqrt(((float) nx) + lambda) * arma::sqrtmat_sympd(P_x_pred);
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Xi_pred.col(i) = x_pred + Xi_fact.col(i-1);
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Xi_pred.col(i+nx) = x_pred - Xi_fact.col(i-1);
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Zi_pred.col(i) = (*measurement_fcn)(Xi_pred.col(i));
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Zi_pred.col(i+nx) = (*measurement_fcn)(Xi_pred.col(i+nx));
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}
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// Compute measurement mean
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arma::mat z_pred = W0_m*Zi_pred.col(0) + Wi_m*arma::sum(Zi_pred.cols(1,np-1),1);
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// Compute measurement covariance and cross covariance
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arma::mat P_zz_pred = W0_c * ((Zi_pred.col(0) - z_pred) * (Zi_pred.col(0).t() - z_pred.t()));
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arma::mat P_xz_pred = W0_c * ((Xi_pred.col(0) - x_pred) * (Zi_pred.col(0).t() - z_pred.t()));
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for (uint8_t i = 0; i < np; i++)
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{
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P_zz_pred = P_zz_pred + Wi_m * ((Zi_pred.col(i) - z_pred) * (Zi_pred.col(i).t() - z_pred.t()));
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P_xz_pred = P_xz_pred + Wi_m * ((Xi_pred.col(i) - x_pred) * (Zi_pred.col(i).t() - z_pred.t()));
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}
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P_zz_pred = P_zz_pred + noise_covariance;
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// Estimate cubature Kalman gain
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arma::mat W_k = P_xz_pred*arma::inv(P_zz_pred);
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// Estimate and store the updated mean and error covariance
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x_est = x_pred + W_k*(z_upd - z_pred);
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P_x_est = P_x_pred - W_k*P_zz_pred*W_k.t();
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}
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arma::mat Unscented_filter::get_x_pred() const
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{
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return x_pred_out;
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}
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arma::mat Unscented_filter::get_P_x_pred() const
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{
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return P_x_pred_out;
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}
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arma::mat Unscented_filter::get_x_est() const
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{
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return x_est;
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}
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arma::mat Unscented_filter::get_P_x_est() const
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{
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return P_x_est;
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}
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/***************** END UNSCENTED KALMAN FILTER *****************/
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/*!
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* \file cubature_filter.h
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* \brief Interface of a library with Bayesian noise statistic estimation
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* \file nonlinear_tracking.h
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* \brief Interface of a library for nonlinear tracking algorithms
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*
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* Cubature_Filter implements the functionality of the Cubature Kalman
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* Filter, which uses multidimensional cubature rules to estimate the
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* time evolution of a nonlinear system.
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* time evolution of a nonlinear system. Unscented_filter implements
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* an Unscented Kalman Filter which uses Unscented Transform rules to
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* perform a similar estimation.
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*
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* [1] I Arasaratnam and S Haykin. Cubature kalman filters. IEEE
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* Transactions on Automatic Control, 54(6):1254–1269,2009.
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@ -38,8 +40,8 @@
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* -------------------------------------------------------------------------
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*/
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#ifndef GNSS_SDR_CUBATURE_FILTER_H_
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#define GNSS_SDR_CUBATURE_FILTER_H_
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#ifndef GNSS_SDR_NONLINEAR_TRACKING_H_
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#define GNSS_SDR_NONLINEAR_TRACKING_H_
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#include <armadillo>
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#include <gnuradio/gr_complex.h>
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@ -81,4 +83,33 @@ private:
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arma::mat P_x_est;
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};
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class Unscented_filter
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{
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public:
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// Constructors and destructors
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Unscented_filter();
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Unscented_filter(int nx);
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Unscented_filter(const arma::vec& x_pred_0, const arma::mat& P_x_pred_0);
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~Unscented_filter();
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// Reinitialization function
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void initialize(const arma::mat& x_pred_0, const arma::mat& P_x_pred_0);
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// Prediction and estimation
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void predict_sequential(const arma::vec& x_post, const arma::mat& P_x_post, Model_Function* transition_fcn, const arma::mat& noise_covariance);
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void update_sequential(const arma::vec& z_upd, const arma::vec& x_pred, const arma::mat& P_x_pred, Model_Function* measurement_fcn, const arma::mat& noise_covariance);
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// Getters
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arma::mat get_x_pred() const;
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arma::mat get_P_x_pred() const;
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arma::mat get_x_est() const;
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arma::mat get_P_x_est() const;
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private:
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arma::vec x_pred_out;
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arma::mat P_x_pred_out;
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arma::vec x_est;
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arma::mat P_x_est;
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};
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#endif
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@ -782,6 +782,7 @@ if(NOT ENABLE_PACKAGING AND NOT ENABLE_FPGA)
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${CMAKE_CURRENT_SOURCE_DIR}/unit-tests/signal-processing-blocks/tracking/cpu_multicorrelator_real_codes_test.cc
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${CMAKE_CURRENT_SOURCE_DIR}/unit-tests/signal-processing-blocks/tracking/bayesian_estimation_test.cc
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${CMAKE_CURRENT_SOURCE_DIR}/unit-tests/signal-processing-blocks/tracking/cubature_filter_test.cc
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${CMAKE_CURRENT_SOURCE_DIR}/unit-tests/signal-processing-blocks/tracking/unscented_filter_test.cc
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)
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if(${FILESYSTEM_FOUND})
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target_compile_definitions(trk_test PRIVATE -DHAS_STD_FILESYSTEM=1)
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#include "unit-tests/signal-processing-blocks/tracking/bayesian_estimation_test.cc"
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#include "unit-tests/signal-processing-blocks/tracking/cubature_filter_test.cc"
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#include "unit-tests/signal-processing-blocks/tracking/unscented_filter_test.cc"
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#include "unit-tests/signal-processing-blocks/tracking/cpu_multicorrelator_real_codes_test.cc"
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#include "unit-tests/signal-processing-blocks/tracking/cpu_multicorrelator_test.cc"
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#include "unit-tests/signal-processing-blocks/tracking/galileo_e1_dll_pll_veml_tracking_test.cc"
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/*!
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* \file unscented_filter_test.cc
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* \brief This file implements numerical accuracy test for the CKF library.
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* \author Gerald LaMountain, 2019. gerald(at)ece.neu.edu
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*
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* -------------------------------------------------------------------------
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*
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* Copyright (C) 2010-2019 (see AUTHORS file for a list of contributors)
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*
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* GNSS-SDR is a software defined Global Navigation
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* Satellite Systems receiver
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*
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* This file is part of GNSS-SDR.
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*
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* GNSS-SDR is free software: you can redistribute it and/or modify
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* it under the terms of the GNU General Public License as published by
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* the Free Software Foundation, either version 3 of the License, or
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* (at your option) any later version.
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*
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* GNSS-SDR is distributed in the hope that it will be useful,
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* but WITHOUT ANY WARRANTY; without even the implied warranty of
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* MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
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* GNU General Public License for more details.
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*
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* You should have received a copy of the GNU General Public License
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* along with GNSS-SDR. If not, see <https://www.gnu.org/licenses/>.
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*
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* -------------------------------------------------------------------------
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*/
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#include "nonlinear_tracking.h"
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#include <armadillo>
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#include <gtest/gtest.h>
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#include <random>
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#define UNSCENTED_TEST_N_TRIALS 10
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#define UNSCENTED_TEST_TOLERANCE 10
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class Transition_Model_UKF : public Model_Function {
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public:
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Transition_Model_UKF(arma::mat kf_F) {coeff_mat = kf_F;};
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virtual arma::vec operator() (arma::vec input) {return coeff_mat*input;};
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private:
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arma::mat coeff_mat;
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};
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class Measurement_Model_UKF : public Model_Function {
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public:
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Measurement_Model_UKF(arma::mat kf_H) {coeff_mat = kf_H;};
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virtual arma::vec operator() (arma::vec input) {return coeff_mat*input;};
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private:
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arma::mat coeff_mat;
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};
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TEST(UnscentedFilterComputationTest, UnscentedFilterTest)
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{
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Unscented_filter kf_unscented;
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arma::vec kf_x;
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arma::mat kf_P_x;
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arma::vec kf_x_pre;
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arma::mat kf_P_x_pre;
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arma::vec ukf_x_pre;
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arma::mat ukf_P_x_pre;
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arma::vec kf_x_post;
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arma::mat kf_P_x_post;
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arma::vec ukf_x_post;
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arma::mat ukf_P_x_post;
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arma::mat kf_F;
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arma::mat kf_H;
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arma::mat kf_Q;
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arma::mat kf_R;
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arma::vec eta;
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arma::vec nu;
|
||||
|
||||
arma::vec kf_y;
|
||||
arma::mat kf_P_y;
|
||||
arma::mat kf_K;
|
||||
|
||||
Model_Function* transition_function;
|
||||
Model_Function* measurement_function;
|
||||
|
||||
//--- Perform initializations ------------------------------
|
||||
|
||||
std::random_device r;
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||||
std::default_random_engine e1(r());
|
||||
std::normal_distribution<float> normal_dist(0, 5);
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||||
std::uniform_real_distribution<float> uniform_dist(0.1, 5.0);
|
||||
|
||||
uint8_t nx = 0;
|
||||
uint8_t ny = 0;
|
||||
|
||||
for (uint16_t k = 0; k < UNSCENTED_TEST_N_TRIALS; k++)
|
||||
{
|
||||
nx = std::rand() % 5 + 1;
|
||||
ny = std::rand() % 5 + 1;
|
||||
|
||||
kf_x = arma::randn<arma::vec>(nx,1);
|
||||
|
||||
kf_P_x_post = 5.0 * arma::diagmat(arma::randu<arma::vec>(nx,1));
|
||||
kf_x_post = arma::mvnrnd(kf_x, kf_P_x_post);
|
||||
|
||||
kf_unscented.initialize(kf_x_post, kf_P_x_post);
|
||||
|
||||
// Prediction Step
|
||||
kf_F = arma::randu<arma::mat>(nx,nx);
|
||||
kf_Q = arma::diagmat(arma::randu<arma::vec>(nx,1));
|
||||
|
||||
transition_function = new Transition_Model_UKF(kf_F);
|
||||
arma::mat ttx = (*transition_function)(kf_x_post);
|
||||
|
||||
kf_unscented.predict_sequential(kf_x_post,kf_P_x_post,transition_function,kf_Q);
|
||||
|
||||
ukf_x_pre = kf_unscented.get_x_pred();
|
||||
ukf_P_x_pre = kf_unscented.get_P_x_pred();
|
||||
|
||||
kf_x_pre = kf_F * kf_x_post;
|
||||
kf_P_x_pre = kf_F * kf_P_x_post * kf_F.t() + kf_Q;
|
||||
|
||||
EXPECT_TRUE(arma::approx_equal(ukf_x_pre, kf_x_pre, "absdiff", UNSCENTED_TEST_TOLERANCE));
|
||||
EXPECT_TRUE(arma::approx_equal(ukf_P_x_pre, kf_P_x_pre, "absdiff", UNSCENTED_TEST_TOLERANCE));
|
||||
|
||||
// Update Step
|
||||
kf_H = arma::randu<arma::mat>(ny,nx);
|
||||
kf_R = arma::diagmat(arma::randu<arma::vec>(ny,1));
|
||||
|
||||
eta = arma::mvnrnd(arma::zeros<arma::vec>(nx,1),kf_Q);
|
||||
nu = arma::mvnrnd(arma::zeros<arma::vec>(ny,1),kf_R);
|
||||
|
||||
kf_y = kf_H*(kf_F*kf_x + eta) + nu;
|
||||
|
||||
measurement_function = new Measurement_Model_UKF(kf_H);
|
||||
kf_unscented.update_sequential(kf_y,kf_x_pre,kf_P_x_pre,measurement_function,kf_R);
|
||||
|
||||
ukf_x_post = kf_unscented.get_x_est();
|
||||
ukf_P_x_post = kf_unscented.get_P_x_est();
|
||||
|
||||
kf_P_y = kf_H * kf_P_x_pre * kf_H.t() + kf_R;
|
||||
kf_K = (kf_P_x_pre * kf_H.t()) * arma::inv(kf_P_y);
|
||||
|
||||
kf_x_post = kf_x_pre + kf_K * (kf_y - kf_H * kf_x_pre);
|
||||
kf_P_x_post = (arma::eye(nx,nx) - kf_K * kf_H) * kf_P_x_pre;
|
||||
|
||||
EXPECT_TRUE(arma::approx_equal(ukf_x_post, kf_x_post, "absdiff", UNSCENTED_TEST_TOLERANCE));
|
||||
EXPECT_TRUE(arma::approx_equal(ukf_P_x_post, kf_P_x_post, "absdiff", UNSCENTED_TEST_TOLERANCE));
|
||||
|
||||
delete transition_function;
|
||||
delete measurement_function;
|
||||
}
|
||||
}
|
Loading…
Reference in New Issue
Block a user