基于视频内容的高性能视频编码方向变换

Long Xu, K. Ngan
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引用次数: 3

摘要

在模相关方向变换(MDDT)中,利用Karhunen-CLoeve变换(KLT)更好地压缩了预测残差的方向边缘。MDDT的变换基是根据视频特征的多样性对预测残差进行奇异值分解(SVD)得到的。MDDT依赖于模式,但不依赖于视频内容。预计它对大多数视频序列都是有效的。但是,在设计变换依据时没有考虑到视频内容的差异性。本文首先将视频内容特征定义为系数幅度、优势梯度和残差空间活动直方图的串联。其次,将离线训练得到的KLT基与给定的特征相关联。第三,提出了一种基于直方图的特征匹配算法,从提供的多个候选变换基中选择最佳变换基进行编码。实验表明,与目前最先进的帧间编码MDDT相比,所提出的视频内容相关方向变换(CDDT)可以实现0.65dB PSNR的平均率失真(R-D)改善。与率失真优化变换(RDOT)相比,CDDT还节省了约3%的比特,并提高了相当的PSNR。
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Video Content Dependent Directional Transform for High Performance Video Coding
In Mode-Dependent Directional Transform (MDDT), Karhunen-CLoeve Transform (KLT) was employed to better compress the directional edges of intra prediction residues. The transform bases of MDDT were derived from the Singular Value Decomposition (SVD) of the intra prediction residues with the diversity of video characteristics. MDDT was mode dependent, but not video content dependent. It was expected to be efficient to most video sequences. However, it did not consider the difference of video content for designing transform basis. In this paper, a video content feature is firstly defined as a concatenation of coefficient magnitude, dominant gradient and spatial activity histograms of residues. Secondly, each KLT basis which is obtained from off-line training is associated with a given feature. Thirdly, a histogram-based feature matching algorithm is proposed to select the best transform basis from the provided multiple candidates for encoding a frame. The experiments show that the average Rate-Distortion (R-D) improvement of 0.65dB PSNR can be achieved by the proposed video Content Dependent Directional Transform (CDDT) compared to the state-of-the-art MDDT for inter frame coding. Compared to Rate-Distortion Optimized Transform (RDOT), CDDT also has about 3% bits saving and comparable PSNR improvement.
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