A Parametric Merge Candidate for High Efficiency Video Coding

M. Tok, Marko Esche, A. Glantz, A. Krutz, T. Sikora
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引用次数: 3

Abstract

Block based motion compensated prediction still is the main technique used for temporal redundancy reduction in modern hybrid video codecs. However, the resulting motion vector fields are highly redundant as well. So, motion vector prediction and difference coding are used to compress such vector fields. A drawback of common motion vector prediction techniques is their inability to predict complex motion such as rotation and zoom in an efficient way. We present a novel Merge candidate for improving already existing vector prediction techniques based on higher order motion models to overcome this issue. To transmit the needed models, an efficient compression scheme is utilized. The improvement results in bit rate savings of 1.7% in average and up to 4% respectively.
一种高效视频编码的参数合并候选算法
基于块的运动补偿预测仍然是现代混合视频编解码器中减少时间冗余的主要技术。然而,由此产生的运动矢量场也是高度冗余的。因此,采用运动矢量预测和差分编码对矢量场进行压缩。常见的运动矢量预测技术的一个缺点是它们不能有效地预测复杂的运动,如旋转和缩放。为了克服这一问题,我们提出了一种新的合并候选算法来改进现有的基于高阶运动模型的矢量预测技术。为了传输所需的模型,采用了一种有效的压缩方案。改进后的比特率平均可节省1.7%,最高可节省4%。
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