Multiple Feature-based Classifications Adaptive Loop Filter

Johannes Erfurt, Wang-Q Lim, H. Schwarz, D. Marpe, T. Wiegand
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引用次数: 5

Abstract

In video coding, adaptive loop filter (ALF) has attracted attention due to its increasing coding performances. Recently ALF has been further developed for its extension, which introduces geometry transformation-based adaptive loop filter (GALF) outperforming the existing ALF techniques. The main idea of ALF is to apply a classification to obtain multiple classes, which gives a partition of a set of all pixel locations. After that, a Wiener filter is applied for each class. Therefore, the performance of ALF essentially relies on how its classification behaves. In this paper, we introduce a novel classification method, Multiple feature-based Classifications ALF (MCALF) extending a classification in GALF and show that it increases coding efficiency while only marginally raising encoding complexity. The key idea is to apply more than one classifier at the encoder to group all reconstructed samples and then to select a classifier with the best RD-performance to carry out the classification process. Simulation results show that around 2% bit rate reduction can be achieved on top of GALF for some selected test sequences.
基于多特征的分类自适应环路滤波器
在视频编码中,自适应环路滤波器(ALF)因其不断提高的编码性能而备受关注。近年来,基于几何变换的自适应环路滤波器(GALF)在原有滤波技术的基础上得到了进一步的发展。ALF的主要思想是应用一个分类来获得多个类,它给出了一组所有像素位置的分区。之后,对每个类应用维纳过滤器。因此,ALF的性能本质上依赖于它的分类行为。本文提出了一种新的分类方法——基于多特征的分类ALF (Multiple feature-based Classifications ALF, MCALF),该方法对基于多特征的分类ALF进行了扩展,在提高编码效率的同时,只略微提高了编码复杂度。关键思想是在编码器上应用多个分类器对所有重构样本进行分组,然后选择一个rd性能最好的分类器进行分类。仿真结果表明,对于一些选定的测试序列,在GALF的基础上可以实现约2%的比特率降低。
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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