H.263 to H.264 Transconding using Data Mining

G. Fernández-Escribano, J. Bialkowski, H. Kalva, P. Cuenca, L. Orozco-Barbosa, André Kaup
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引用次数: 4

Abstract

In this paper, we propose the use of data mining algorithms to create a macroblock partition mode decision algorithm for inter-frame prediction, to be used as part of a high-efficient H.263 to H.264 transcoder. We use machine learning tools to exploit the correlation and derive decision trees to classify the incoming H.263 MC residual into one of the several coding modes in H.264. The proposed approach reduces the H.264 MB mode computation process into a decision tree lookup with very low complexity. Experimental results show that the proposed approach reduces the inter-prediction complexity by as much as 60% while maintaining the coding efficiency.
H.263到H.264的数据挖掘转换
在本文中,我们提出使用数据挖掘算法来创建用于帧间预测的宏块划分模式决策算法,作为高效的H.263到H.264转码器的一部分。我们使用机器学习工具利用相关性并推导决策树,将传入的H.263 MC残差分类为H.264中的几种编码模式之一。该方法将H.264 MB模式的计算过程简化为一个非常低复杂度的决策树查找过程。实验结果表明,该方法在保持编码效率的前提下,将预测复杂度降低了60%。
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