A locally optimal design algorithm for block-based multi-hypothesis motion-compensated prediction

M. Flierl, T. Wiegand, B. Girod
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引用次数: 76

Abstract

Multi-hypothesis motion-compensated prediction extends traditional motion-compensated prediction used in video coding schemes. Known algorithms for block-based multi-hypothesis motion-compensated prediction are, for example, overlapped block motion compensation (OBMC) and bidirectionally predicted frames (B-frames). This paper presents a generalization of these algorithms in a rate-distortion framework. All blocks which are available for prediction are called hypotheses. Further, we explicitly distinguish between the search space and the superposition of hypotheses. Hypotheses are selected from a search space and their spatio-temporal positions are transmitted by means of spatio-temporal displacement codewords. Constant predictor coefficients are used to combine linearly hypotheses of a multi-hypothesis. The presented design algorithm provides an estimation criterion for optimal multi-hypotheses, a rule for optimal displacement codes, and a condition for optimal predictor coefficients. Statistically dependent hypotheses of a multi-hypothesis are determined by an iterative algorithm. Experimental results show that Increasing the number of hypotheses from 1 to 8 provides prediction gains up to 3 dB in prediction error.
基于块的多假设运动补偿预测的局部最优设计算法
多假设运动补偿预测扩展了传统的运动补偿预测在视频编码中的应用。已知的基于块的多假设运动补偿预测算法,例如,重叠块运动补偿(OBMC)和双向预测帧(b帧)。本文在率失真框架下对这些算法进行了推广。所有可用于预测的块都称为假设。此外,我们明确区分了搜索空间和假设的叠加。从搜索空间中选择假设,并通过时空位移码字传递假设的时空位置。常数预测系数用于组合多假设的线性假设。该算法给出了最优多重假设的估计准则、最优位移码的规则和最优预测系数的条件。多假设的统计相关假设由迭代算法确定。实验结果表明,将假设数从1个增加到8个,预测误差增益可达3 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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