分布式多视点视频编码中基于特征和运动提取的侧信息融合

Hui Yin, Mengyao Sun, Yumei Wang, Yu Liu
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引用次数: 3

摘要

在分布式多视点视频编码(DMVC)中,侧信息(SI)的质量对wner - ziv (WZ)帧的解码和重建至关重要。一般来说,它的质量受到两个主要原因的影响。其中一个原因是WZ帧的运动对象由于快速运动很容易被错误估计。二是运动物体周围的背景也容易因为遮挡而被错误估计。基于这些原因,提出了一种利用不同方案重构不同部件互补性的SI融合方法。通过运动检测提取运动目标,利用临时相关性和空间相关性对运动目标进行预测。对于运动物体周围的背景,利用临时相关性进行预测。值得注意的是,本文使用的预测方法是基于基于特征的全局运动模型。实验结果表明,WZ帧的SI具有较高的精度质量,特别是对于具有快速运动目标的序列,其率失真(RD)性能得到了显著改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion side information based on feature and motion extraction for distributed multiview video coding
In distributed multiview video coding (DMVC), the quality of side information (SI) is crucial for decoding and the reconstruction of the Wyner-Ziv (WZ) frames. Generally, its quality is influenced by two main reasons. One reason is that the moving object of the WZ frames can be easily misestimated because of fast motion. The other is that the background around the moving object is also easily misestimated because of occlusion. According to these reasons, a novel SI fusion method is proposed which exploits different schemes to reconstruct different parts complementarity. Motion detection is performed to extract the moving object which can be predicted by utilizing both temporary correlations and spatial correlations. As for background around the moving object, temporary correlations are utilized to predict it. It is noteworthy that the prediction method used in this paper is based on a feature based global motion model. The experiment results show high precision quality of the SI of the WZ frames and significant improvement in rate distortion (RD) performance especially for the sequence with fast moving objects.
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