Spatial intra-prediction based on mixtures of sparse representations

Angélique Dremeau, Mehmet Türkan, C. Herzet, C. Guillemot, J. Fuchs
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引用次数: 4

Abstract

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.
基于稀疏表示混合的空间内预测
本文研究了基于稀疏表示的空间预测问题。处理这个问题的几个算法可以在文献中找到。我们提出了一种涉及混合稀疏表示的新方法。我们首先把这种方法放到一个概率框架中,然后推导出一个实用的程序来解决它。通过对率失真性能的比较,表明了该算法相对于其他先进算法的优越性。
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