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Adaptive hierarchical motion estimation optimization for scalable HEVC

机译:可扩展HEVC的自适应分层运动估计优化

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The scalable extension of the HEVC Video Coding Standard (H.265) offers elaborate mechanisms for motion vector prediction and estimation. S-HEVC builds on the standard by extending predictor lists for Coding Unit blocks, utilizing base-layer information in the inference of enhancement-layer Coding Units. The complex, exhaustive search schemes in use can be aided by hierarchical optimizations in subpixel motion estimation, which we propose for slow-moving CUs per frame. In this paper we implement and test an adaptive optimization of motion estimation in the standard (SHM 6.1 software release), based on a statistical analysis of the behavior of subpixel motion vector differentials in each spatial mode per Coding Unit. We propose that the least granular mode (64×64 PEL macro-block in current release) contains sufficient information at subpixel levels to decide best-mode selection, i.e., whether a complete recursion through the inner partitions (higher granularity) is required in the estimation of a CU motion vector. We further propose that subpixel motion estimation overheads can be avoided below a set threshold, given conditions set in base and enhancement layer motion estimation for priorly computed modes in the same CU. Both optimization methods are tested across a diverse set of video sequences, producing negligible quality penalties at for a sizable reduction in encoding time.
机译:HEVC视频编码标准(H.265)的可扩展扩展为运动矢量预测和估计提供了详尽的机制。 S-HEVC通过扩展编码单元块的预测器列表,在增强层编码单元的推断中利用基础层信息来建立在该标准的基础上。子像素运动估计中的分层优化可以帮助使用复杂而详尽的搜索方案,我们建议为每帧CU缓慢移动。在本文中,我们基于每个编码单位在每种空间模式下子像素运动矢量差的行为的统计分析,在标准(SHM 6.1软件版本)中实施和测试了运动估计的自适应优化。我们建议最小粒度模式(当前版本中为64×64 PEL宏块)在子像素级别包含足够的信息,以决定最佳模式选择,即,是否需要通过内部分区的完整递归(较高粒度)。 CU运动矢量的估计。我们进一步提出,给定在相同CU中预先计算的模式的基础层和增强层运动估计中设置的条件,可以在设置的阈值以下避免子像素运动估计开销。两种优化方法均在多种视频序列中进行了测试,从而在质量上可忽略不计,从而大大减少了编码时间。

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