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首页> 外文期刊>Journal of visual communication & image representation >Mode dependent loop filter for intra prediction coding in H.264/AVC
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Mode dependent loop filter for intra prediction coding in H.264/AVC

机译:H.264 / AVC中用于帧内预测编码的模式相关环路滤波器

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摘要

In this paper, a high performance and low complexity loop filter is proposed for intra prediction coding. Although the deblocking loop filter (DLF) has achieved outstanding performance on suppressing quantization noise, it also induces details information loss because of the smoothing operation. To achieve better restoration performance, we propose a filter set named mode dependent loop filter (MDLF) which adaptively select the filter coefficients according to various local characteristics. In the homogeneous areas, the task of the filter emphasizes on smoothing the noise. In the heterogeneous areas, the proposed filter concentrates on preserving the details. Based on the spatial correlation assumption and statistical analysis, the intra mode combination is used to classify the training samples with different local characteristics. Then the classical least mean square error framework is employed to solve the coefficients for the proposed filter set. In this way. a more efficient adaptive loop filter scheme can be achieved for specific intra mode combination. Experiment results show that the proposed loop filter achieves superior coding gains compared to the H.264/AVC High Profile. Furthermore, relative to QALF+DLF, a comparable performance also can be achieved by the proposed MDLF with far less complexity increase.
机译:本文提出了一种用于帧内预测编码的高性能,低复杂度的环路滤波器。尽管解块环路滤波器(DLF)在抑制量化噪声方面取得了出色的性能,但由于进行平滑操作,还会引起细节信息丢失。为了获得更好的恢复性能,我们提出了一种名为模式相关环路滤波器(MDLF)的滤波器集,该滤波器集会根据各种局部特征自适应地选择滤波器系数。在均匀区域中,滤波器的工作重点是使噪声平滑。在异构区域,建议的过滤器集中于保留细节。基于空间相关假设和统计分析,帧内模式组合用于对具有不同局部特征的训练样本进行分类。然后采用经典的最小均方误差框架来求解所提出的滤波器组的系数。通过这种方式。对于特定的帧内模式组合,可以实现更有效的自适应环路滤波器方案。实验结果表明,与H.264 / AVC High Profile相比,该环路滤波器具有更高的编码增益。此外,相对于QALF + DLF,所提出的MDLF也可以实现相当的性能,而复杂度的增加要少得多。

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