Optimized Non-local In-Loop Filter for Video Coding

Xuewei Meng, Chuanmin Jia, Shanshe Wang, Xiaozhen Zheng, Siwei Ma
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引用次数: 4

Abstract

In order to compensate the shortcomings of existing in-loop filters only based on local correlation in video coding standards, many non-local based loop filters with high coding performance and computational complexity are proposed. In this paper, we propose a fast block matching algorithm, adaptive two-step block matching algorithm, based on our previous work, structure-driven adaptive non-local filter (SANF) which is computationally intensive because of the high complexity of block matching and singular value decomposition (SVD). Our proposed algorithm based on image spatial statistical characteristics utilizes fixed template to select adaptive number of similar blocks according to image content, which can reduce up to 75.2% search candidates compared to exhaustive search in SANF and the adaptive determination strategy can remove blocks with less relation to reference block in similar block group which have little help for compression performance, and the remove of them can reduce the computational complexity of SVD. Our proposed optimization algorithm can save encoding and decoding time significantly with negligible performance loss, which achieves 70.7%, 84.4%, 80.82% and 81.95% decoding time saving with only 0.13%, 0.05%, 0.13% and 0.15% increases of BD-rate for AI, RA, LDB and LDP configurations, respectively compared to original SANF in JEM-7.0.
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优化的视频编码非局部环内滤波器
为了弥补现有视频编码标准中仅基于局部相关的环内滤波器的不足,提出了许多具有高编码性能和计算复杂度的非局部环内滤波器。本文提出了一种快速的块匹配算法——自适应两步块匹配算法,该算法是基于结构驱动的自适应非局部滤波器(SANF),该算法由于块匹配和奇异值分解(SVD)的高复杂度而导致计算量大。该算法基于图像空间统计特征,利用固定模板根据图像内容选择自适应数量的相似块,与SANF的穷举搜索相比,可减少75.2%的候选搜索量,并且自适应确定策略可以去除相似块组中与参考块关系较小且对压缩性能帮助不大的块,并且可以降低奇异值分解的计算复杂度。本文提出的优化算法可以显著节省编解码时间,性能损失可以忽略,在AI、RA、LDB和LDP配置下,译码时间分别节省70.7%、84.4%、80.82%和81.95%,译码率仅比JEM-7.0中原始SANF分别提高0.13%、0.05%、0.13%和0.15%。
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