首页> 外文期刊>Image Processing, IEEE Transactions on >Side Information and Noise Learning for Distributed Video Coding Using Optical Flow and Clustering
【24h】

Side Information and Noise Learning for Distributed Video Coding Using Optical Flow and Clustering

机译:使用光流和聚类的用于分布式视频编码的辅助信息和噪声学习

获取原文
获取原文并翻译 | 示例
       

摘要

Distributed video coding (DVC) is a coding paradigm that exploits the source statistics at the decoder side to reduce the complexity at the encoder. The coding efficiency of DVC critically depends on the quality of side information generation and accuracy of noise modeling. This paper considers transform domain Wyner–Ziv (TDWZ) coding and proposes using optical flow to improve side information generation and clustering to improve the noise modeling. The optical flow technique is exploited at the decoder side to compensate for weaknesses of block-based methods, when using motion-compensation to generate side information frames. Clustering is introduced to capture cross band correlation and increase local adaptivity in the noise modeling. This paper also proposes techniques to learn from previously decoded WZ frames. Different techniques are combined by calculating a number of candidate soft side information for low density parity check accumulate decoding. The proposed decoder side techniques for side information and noise learning (SING) are integrated in a TDWZ scheme. On test sequences, the proposed SING codec robustly improves the coding efficiency of TDWZ DVC. For WZ frames using a GOP size of 2, up to 4-dB improvement or an average (Bjøntegaard) bit-rate savings of 37% is achieved compared with DISCOVER.
机译:分布式视频编码(DVC)是一种编码范例,可利用解码器端的源统计信息来减少编码器的复杂性。 DVC的编码效率主要取决于辅助信息生成的质量和噪声建模的准确性。本文考虑了变换域Wyner-Ziv(TDWZ)编码,并提出使用光流来改善边信息的生成和聚类来改善噪声建模。当使用运动补偿来生成边信息帧时,在解码器侧利用光流技术来补偿基于块的方法的弱点。引入聚类以捕获跨频带相关性并增加噪声建模中的局部适应性。本文还提出了从先前解码的WZ帧中学习的技术。通过计算用于低密度奇偶校验累积解码的多个候选软边信息来组合不同的技术。提出的用于辅助信息和噪声学习(SING)的解码器辅助技术已集成到TDWZ方案中。在测试序列上,提出的SING编解码器稳健地提高了TDWZ DVC的编码效率。对于GOP大小为2的WZ帧,与DISCOVER相比,最多可提高4 dB或平均(Bjøntegaard)比特率节省37%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号