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Motion Refinement Based Progressive Side-Information Estimation for Wyner-Ziv Video Coding

机译:基于运动细化的Wyner-Ziv视频编码渐进边信息估计

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During the past ten years, Wyner-Ziv video coding (WZVC) has gained a lot of research interests because of its unique characteristics of “simple encoding, complex decoding.” However, the performance gap between WZVC and conventional video coding has never been closed to the point promised by the information theory. In this paper, we illustrate the chicken-and-egg dilemma encountered in WZVC: high-efficiency WZVC requires good estimation of side information (SI); however, good SI estimation is not possible for the decoder without access to the decoded current frame. To resolve such a dilemma, we present and advocate a framework that explores an important concept of decoder-side progressive-learning. More specifically, a decoder-side multi-resolution motion refinement (MRMR) scheme is proposed, where the decoder is able to learn from the already-decoded lower-resolution data to refine the motion estimation (ME), which in turn greatly improves the SI quality as well as the coding efficiency for the higher resolution data. Theoretical analysis shows that at high rates, decoder-side MRMR outperforms motion extrapolation by as much as 5 dB, while falling behind conventional encoder-side inter-frame ME by only about 1.5 dB. In addition, since decoder-side ME does not suffer from the bit-rate overhead in transmitting the motion information, further performance gain can be achieved for decoder-side MRMR by incorporating fractional-pel motion search, block matching with smaller block sizes, and multiple hypothesis prediction. We also present a practical WZVC implementation with MRMR, which shows comparable coding performance as H.264 at very high bit-rates.
机译:在过去的十年中,Wyner-Ziv视频编码(WZVC)由于其“简单编码,复杂解码”的独特特征而获得了很多研究兴趣。但是,WZVC和常规视频编码之间的性能差距从未达到信息理论所承诺的程度。在本文中,我们说明了在WZVC中遇到的“鸡与蛋”的困境:高效的WZVC需要对辅助信息(SI)进行良好的估算;但是,如果不访问已解码的当前帧,则对于解码器而言,好的SI估计是不可能的。为了解决这一难题,我们提出并倡导了一个框架,该框架探讨了解码器端渐进式学习的重要概念。更具体地说,提出了一种解码器侧多分辨率运动细化(MRMR)方案,其中解码器能够从已经解码的较低分辨率数据中学习以细化运动估计(ME),从而大大改善了运动估计(ME)。 SI质量以及更高分辨率数据的编码效率。理论分析表明,在高速率下,解码器侧MRMR的运动外推性能最高可达5 dB,而在传统编码器侧帧间ME方面仅落后1.5 dB。另外,由于解码器侧ME在发送运动信息时不会受到比特率开销的影响,因此通过结合分数像素运动搜索,具有较小块尺寸的块匹配,以及解码器侧MRMR,可以进一步提高性能。多重假设预测。我们还提出了一种具有MRMR的实用WZVC实现,该实现在非常高的比特率下具有与H.264相当的编码性能。

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