Classification approach based on the product of riemannian manifolds from Gaussian parametrization space

Yannick Berthoumieu, Lionel Bombrun, Christian Germain, Salem Said
2017 2017 IEEE International Conference on Image Processing (ICIP)  
Said. Classification approach based on the product of riemannian manifolds from Gaussian parametrization space. ABSTRACT This paper presents a novel framework for visual content classification using jointly local mean vectors and covariance matrices of pixel level input features. We consider local mean and covariance as realizations of a bivariate Riemannian Gaussian density lying on a product of submanifolds. We first introduce the generalized Mahalanobis distance and then we propose a formal
more » ... efinition of our product-spaces Gaussian distribution on R m × SPD(m). This definition enables us to provide a mixture model from a mixture of a finite number of Riemannian Gaussian distributions to obtain a tractable descriptor. Mixture parameters are estimated from training data by exploiting an iterative Expectation-Maximization (EM) algorithm. Experiments in a texture classification task are conducted to evaluate this extended modeling on several color texture databases, namely popular Vistex, 167-Vistex and CUReT. These experiments show that our new mixture model competes with state-of-the-art on the experimented datasets.
doi:10.1109/icip.2017.8296272 dblp:conf/icip/BerthoumieuBGS17 fatcat:xuyx4mjpbbgf7hox53fx7pggn4