Angélique Dremeau, Mehmet Türkan, C. Herzet, C. Guillemot, J. Fuchs
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Spatial intra-prediction based on mixtures of sparse representations
In this paper, we consider the problem of spatial prediction based on sparse representations. Several algorithms dealing with this problem can be found in the literature. We propose a novel method involving a mixture of sparse representations. We first place this approach into a probabilistic framework and then derive a practical procedure to solve it. Comparisons of the rate-distortion performance show the superiority of the proposed algorithm with regard to other state-of-the-art algorithms.