/*! * \file bayesian_estimation.h * \brief Interface of a library with Bayesian noise statistic estimation * * Bayesian_estimator is a Bayesian estimator which attempts to estimate * the properties of a stochastic process based on a sequence of * discrete samples of the sequence. * * [1]: LaMountain, Gerald, VilĂ -Valls, Jordi, Closas, Pau, "Bayesian * Covariance Estimation for Kalman Filter based Digital Carrier * Synchronization," Proceedings of the 31st International Technical Meeting * of the Satellite Division of The Institute of Navigation * (ION GNSS+ 2018), Miami, Florida, September 2018, pp. 3575-3586. * https://doi.org/10.33012/2018.15911 * * \authors * ----------------------------------------------------------------------------- * * GNSS-SDR is a Global Navigation Satellite System software-defined receiver. * This file is part of GNSS-SDR. * * Copyright (C) 2010-2020 (see AUTHORS file for a list of contributors) * SPDX-License-Identifier: GPL-3.0-or-later * * ----------------------------------------------------------------------------- */ #ifndef GNSS_SDR_BAYESIAN_ESTIMATION_H #define GNSS_SDR_BAYESIAN_ESTIMATION_H #if ARMA_NO_BOUND_CHECKING #define ARMA_NO_DEBUG 1 #endif #include #include /** \addtogroup Tracking * \{ */ /** \addtogroup Tracking_libs * \{ */ /*! \brief Bayesian_estimator is an estimator of noise characteristics (i.e. mean, covariance) * * Bayesian_estimator is an estimator which performs estimation of noise characteristics from * a sequence of identically and independently distributed (IID) samples of a stationary * stochastic process by way of Bayesian inference using conjugate priors. The posterior * distribution is assumed to be Gaussian with mean \mathbf{\mu} and covariance \hat{\mathbf{C}}, * which has a conjugate prior given by a normal-inverse-Wishart distribution with paramemters * \mathbf{\mu}_{0}, \kappa_{0}, \nu_{0}, and \mathbf{\Psi}. * * [1] TODO: Ref1 * */ class Bayesian_estimator { public: Bayesian_estimator(); explicit Bayesian_estimator(int ny); Bayesian_estimator(const arma::vec& mu_prior_0, int kappa_prior_0, int nu_prior_0, const arma::mat& Psi_prior_0); ~Bayesian_estimator() = default; void init(const arma::mat& mu_prior_0, int kappa_prior_0, int nu_prior_0, const arma::mat& Psi_prior_0); void update_sequential(const arma::vec& data); void update_sequential(const arma::vec& data, const arma::vec& mu_prior_0, int kappa_prior_0, int nu_prior_0, const arma::mat& Psi_prior_0); arma::mat get_mu_est() const; arma::mat get_Psi_est() const; private: arma::vec mu_est; arma::mat Psi_est; arma::vec mu_prior; arma::mat Psi_prior; int kappa_prior; int nu_prior; }; /** \} */ /** \} */ #endif // GNSS_SDR_BAYESIAN_ESTIMATION_H