function prob = gaussPDF(Data, Mu, Sigma)
% Likelihood of datapoint(s) to be generated by a Gaussian parameterized by center and covariance.
% Inputs -----------------------------------------------------------------
% o Data: D x N array representing N datapoints of D dimensions.
% o Mu: D x 1 vector representing the center of the Gaussian.
% o Sigma: D x D array representing the covariance matrix of the Gaussian.
% Output -----------------------------------------------------------------
% o prob: 1 x N vector representing the likelihood of the N datapoints.
%
% Writing code takes time. Polishing it and making it available to others takes longer!
% If some parts of the code were useful for your research of for a better understanding
% of the algorithms, please reward the authors by citing the related publications,
% and consider making your own research available in this way.
%
% @article{Calinon15,
% author="Calinon, S.",
% title="A Tutorial on Task-Parameterized Movement Learning and Retrieval",
% journal="Intelligent Service Robotics",
% year="2015"
% }
%
% Copyright (c) 2015 Idiap Research Institute, http://idiap.ch/
% Written by Sylvain Calinon, http://calinon.ch/
%
% This file is part of PbDlib, http://www.idiap.ch/software/pbdlib/
%
% PbDlib is free software: you can redistribute it and/or modify
% it under the terms of the GNU General Public License version 3 as
% published by the Free Software Foundation.
%
% PbDlib is distributed in the hope that it will be useful,
% but WITHOUT ANY WARRANTY; without even the implied warranty of
% MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
% GNU General Public License for more details.
%
% You should have received a copy of the GNU General Public License
% along with PbDlib. If not, see .
[nbVar,nbData] = size(Data);
Data = Data' - repmat(Mu',nbData,1);
prob = sum((Data/Sigma).*Data, 2);
prob = exp(-0.5*prob) / sqrt((2*pi)^nbVar * abs(det(Sigma)) + realmin);