Improved Intra Coding Beyond AV1 Using Adaptive Prediction Angles and Reference Lines

Liang Zhao, Xin Zhao, Shan Liu
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引用次数: 3

Abstract

A fixed set of intra prediction angles by using the reconstructed samples in adjacent reference line are employed in AV1 to remove the spatial redundancy of video signals. Two methods are proposed in this paper to further improve the intra coding performance of AV1. Firsly, to better signal the intra prediction modes, only a subset of the intra prediction modes (IPMs) are allowed and signaled for each block, which is adaptively selected according to the IPMs of neighboring blocks. Secondly, to reduce the prediction errors when there is a strong discontinuity between the samples in current block and its adjacent reference samples, an adaptive reference line selection method is proposed by enabling farther reference lines for intra prediction. Experimental results show that, the proposed methods achieve 2.2% luma BD-rate savings with around 150% encoding time for intra coding on top of the libaom implementation of AV1.
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使用自适应预测角度和参考线改进AV1以外的内部编码
在AV1中,利用相邻参考线上重构样本的一组固定的内预测角来消除视频信号的空间冗余。为了进一步提高AV1的帧内编码性能,本文提出了两种方法。首先,为了更好地对内部预测模式进行信号化,每个块只允许对内部预测模式的一个子集进行信号化,该子集根据相邻块的ipm自适应选择。其次,为了减小当前块样本与其相邻参考样本之间存在较强不连续时的预测误差,提出了一种自适应参考线选择方法,使参考线更远,从而实现块内预测。实验结果表明,在AV1自由实现的基础上,本文提出的方法实现了2.2%的luma bd率和150%左右的编码时间。
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