Correlation noise modeling for multiview transform domain Wyner-Ziv video coding

Catarina Brites, F. Pereira
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引用次数: 1

Abstract

Multiview Wyner-Ziv (MV-WZ) video coding rate-distortion (RD) performance is highly influenced by the adopted correlation noise model (CNM). In the related literature, the statistics of the correlation noise between the original frame and the side information (SI), typically resulting from the fusion of temporally and inter-view created SIs, is modelled by a Laplacian distribution. In most cases, the Laplacian CNM parameter is estimated using an offline approach, assuming that either the SI is available at the encoder or the originals are available at the decoder which is not realistic. In this context, this paper proposes the first practical, online CNM solution for a multiview transform domain WZ (MV-TDWZ) video codec. The online estimation of the Laplacian CNM parameter is performed at the decoder based on metrics exploring both the temporal and inter-view correlations with two levels of granularity, notably transform band and transform coefficient. The results obtained show that better RD performance is achieved for the finest granularity level since the inter-view, temporal and spatial correlations are exploited with the highest adaptation.
多视点变换域Wyner-Ziv视频编码的相关噪声建模
多视点Wyner-Ziv (MV-WZ)视频编码率失真(RD)性能受到所采用的相关噪声模型(CNM)的高度影响。在相关文献中,原始帧和侧信息(SI)之间的相关噪声的统计,通常是由时间和内部视图创建的SI融合产生的,用拉普拉斯分布建模。在大多数情况下,拉普拉斯CNM参数是使用离线方法估计的,假设SI在编码器处可用,或者原件在解码器处可用,这是不现实的。在此背景下,本文提出了第一个实用的多视点变换域WZ (MV-TDWZ)视频编解码器的在线CNM解决方案。拉普拉斯CNM参数的在线估计是在解码器上进行的,基于度量,探索两个粒度级别的时间和视图间相关性,特别是变换频带和变换系数。结果表明,在最细的粒度水平上,由于利用了视间相关性、时间相关性和空间相关性,具有最高的适应性,因此可以获得更好的RD性能。
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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