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A early mode decision algorithm based on statistics and machine learning for enhancement layers in H.264 Scalable Video Coding

机译:基于统计和机器学习的H.264可扩展视频编码增强层的早期模式决策算法

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摘要

In this paper, a early mode decision algorithm is proposed to reduce the complexity of the mode selection process for enhancement layers in H.264 Scalable Video Coding. Generally, the proposed algorithm consists of the following three main steps, which are applied to the enhancement layer. Firstly, we divide all the macroblocks into 4 classes according to the mode of collocated macroblocks in the base layer. Then, according to the mode of neighboring macroblocks, the macroblocks are subdivided with trained BP (Back Propagation) network. At last, for different cases we choose different mode selection algorithms. Compared to JSVM 9.18, experiment results show that, with this algorithm, 30% encoding time can be saved with a negligible loss in BDSNR, and BDBR can be significantly reduced.
机译:本文提出了一种早期的模式决策算法,以减少H.264可伸缩视频编码中增强层模式选择过程的复杂性。通常,所提出的算法包括以下三个主要步骤,它们被应用于增强层。首先,根据基本层中并置宏块的模式,将所有宏块分为4类。然后,根据相邻宏块的模式,将宏块细分为经过训练的BP(反向传播)网络。最后,针对不同的情况,我们选择了不同的模式选择算法。与JSVM 9.18相比,实验结果表明,使用该算法可以节省30%的编码时间,而BDSNR的损失可以忽略不计,并且可以大大减少BDBR。

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