Fast Line-Based Intra Prediction for Video Coding

Santiago De-Luxán-Hernández, H. Schwarz, D. Marpe, T. Wiegand
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引用次数: 10

Abstract

Intra prediction plays a very important role in current video coding technologies like the H.265/High Efficiency Video Coding (HEVC) standard, the Joint Exploration Test Model (JEM) and the upcoming Versatile Video Coding (VVC) standard. In previous work we proposed a Line-Based Intra Prediction algorithm to improve the state-of-art coding performance of HEVC and JEM. This method divides (horizontally or vertically) a block into lines and then it codes each of them individually in a sequential manner. At the encoder side, however, it is necessary to select an optimal combination of intra mode and 1-D split type in a Rate-Distortion sense. Since testing for every block all possible combinations of these two parameters would imply a very significant increase in the encoder complexity, this paper proposes several fast algorithms to reduce the number of tests and improve the overall trade-off between complexity and gain. The experimental results show a reduction of the encoder run-time from 322% to 166% in exchange for a loss of 0.34% for the All Intra configuration and from 151% to 116% for a loss of 0.15% in the case of Random Access.
基于快速行内预测的视频编码
帧内预测在H.265/高效视频编码(HEVC)标准、联合探索测试模型(JEM)和即将推出的多功能视频编码(VVC)标准等当前视频编码技术中发挥着非常重要的作用。在之前的工作中,我们提出了一种基于线的内预测算法来提高HEVC和JEM的编码性能。该方法将(水平或垂直)块划分为行,然后以顺序的方式分别对每个行进行编码。然而,在编码器方面,有必要在速率失真意义上选择内模式和1-D分割类型的最佳组合。由于对这两个参数的每个块的所有可能组合进行测试将意味着编码器复杂性的显著增加,因此本文提出了几种快速算法来减少测试次数并改善复杂性和增益之间的整体权衡。实验结果表明,在All Intra配置下,编码器运行时间从322%减少到166%,损失为0.34%;在随机存取的情况下,编码器运行时间从151%减少到116%,损失为0.15%。
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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