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Revisiting the Sample Adaptive Offset post-filter of VVC with Neural-Networks

机译:重新探测使用神经网络的VVC后滤波器的样本自适应偏移

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The Sample Adaptive Offset (SAO) filter has been introduced in HEVC to reduce general coding and banding artefacts in the reconstructed pictures, in complement to the De-Blocking Filter (DBF) which reduces artifacts at block boundaries specifically. The new video compression standard Versatile Video Coding (VVC) reduces the BD-rate by about 36% at the same reconstruction quality compared to HEVC. It implements an additional new in-loop Adaptive Loop Filter (ALF) on top of the DBF and the SAO filter, the latter remaining unchanged compared to HEVC. However, the relative performance of SAO in VVC has been lowered significantly. In this paper, it is proposed to revisit the SAO filter using Neural Networks (NN). The general principles of the SAO are kept, but the a-priori classification of SAO is replaced with a set of neural networks that determine which reconstructed samples should be corrected and in which proportion. Similarly to the original SAO, some parameters are determined at the encoder side and encoded per CTU. The average BD-rate gain of the proposed SAO improves VVC by at least 2.3% in Random Access while the overall complexity is kept relatively small compared to other NN-based methods.
机译:已经在HEVC引入了样本自适应偏移(SAO)滤波器,以减少重建图片中的一般编码和带状伪影,以补充到特定地在块边界处减少伪像的脱挡滤波器(DBF)。与HEVC相比,新的视频压缩标准多功能视频编码(VVC)将BD速率降低约36%,在相同的重建质量下。它在DBF和SAO滤波器顶部实现了另一个新的环路自适应环路滤波器(ALF),后者与HEVC相比保持不变。然而,SAO在VVC中的相对性能显着降低。在本文中,提出使用神经网络(NN)重新筛选SAO滤波器。保存SAO的一般原则,但是SAO的a-priori分类被一组神经网络所替换,确定应纠正哪些重建的样本和其中比例。与原始SAO类似,在编码器侧确定一些参数并根据CTU编码。所提出的SAO的平均BD速率增益在随机访问中将VVC改善至少2.3%,而与其他基于NN的方法相比,整体复杂性保持相对较小。

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