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Content-Adaptive Motion Estimation for Efficient Video Compression

机译:有效视频压缩的内容自适应运动估计

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摘要

Motion estimation is the most important step in the video compression. Most of the current video compression systems use forward motion estimation, where motion information is derived at the encoder and sent to the decoder over the channel. Backward motion estimation does not derive an explicit representation of motion at the encoder. Instead, the encoder implicitly embeds the motion information in an alternative subspace. Most recently, an algorithm that adopts least-square prediction (LSP) for backward motion estimation has shown great potential to further improve coding efficiency. Forward motion estimation and backward motion estimation have both their advantages and disadvantages. Each is suitable for handling some specific category of patterns. In this paper, we propose a novel approach that combines both forward motion estimation and backward motion estimation in one framework to adaptively exploit the local motion characteristics in an arbitrary video sequence, thus achieving better coding efficiency. We refer to this as Content-Adaptive Motion Estimation (CoME). The encoder in the proposed system is able to adjust the motion estimation method in a rate-distortion optimized manner. According to the experimental results, CoME reduces the data rate in both lossless and lossy compression.
机译:运动估计是视频压缩中最重要的步骤。当前大多数视频压缩系统都使用前向运动估计,其中运动信息是在编码器中导出的,并通过通道发送到解码器。向后运动估计不会在编码器上得出运动的显式表示。而是,编码器将运动信息隐式地嵌入到替代子空间中。最近,采用最小二乘预测(LSP)进行后向运动估计的算法显示出巨大的潜力,可以进一步提高编码效率。前向运动估计和后向运动估计都有其优点和缺点。每个都适合处理某些特定类别的模式。在本文中,我们提出了一种新颖的方法,该方法在一个框架中结合了前向运动估计和后向运动估计,以自适应地利用任意视频序列中的局部运动特征,从而获得更好的编码效率。我们称其为内容自适应运动估计(CoME)。所提出的系统中的编码器能够以速率失真优化的方式调整运动估计方法。根据实验结果,CoME会同时降低无损压缩和有损压缩的数据速率。

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