Deep Learning Based HEVC In-Loop Filtering for Decoder Quality Enhancement

Shiba Kuanar, C. Conly, K. Rao
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引用次数: 41

Abstract

High Efficiency Video Coding (HEVC), which is the latest video coding standard currently, achieves up to 50% bit rate reduction compared to previous H.264/AVC standard. While performing the block based video coding, these lossy compression techniques produce various artifacts like blurring, distortion, ringing, and contouring effects on output frames, especially at low bit rates. To reduce those compression artifacts HEVC adopted two post processing filtering technique namely de-blocking filter (DBF) and sample adaptive offset (SAO) on the decoder side. While DBF applies to samples located at block boundaries, SAO nonlinear operation applies adaptively to samples satisfying the gradient based conditions through a lookup table. Again SAO filter corrects the quantization errors by sending edge offset values to decoders. This operation consumes extra signaling bit and becomes an overhead to network. In this paper, we proposed a Convolutional Neural Network (CNN) based architecture for SAO in-loop filtering operation without modifying anything on encoding process. Our experimental results show that our proposed model outperformed previous state-of-the-art models in terms of BD-PSNR (0.408 dB) and BD-BR (3.44%), measured on a widely available standard video sequences.
基于深度学习的HEVC环内滤波解码器质量增强
高效视频编码(HEVC)是目前最新的视频编码标准,与之前的H.264/AVC标准相比,可实现高达50%的比特率降低。在执行基于块的视频编码时,这些有损压缩技术会在输出帧上产生各种伪影,如模糊、失真、振铃和轮廓效果,特别是在低比特率下。为了减少这些压缩伪影,HEVC在解码器侧采用了去块滤波(DBF)和采样自适应偏移(SAO)两种后处理滤波技术。DBF应用于位于块边界的样本,SAO非线性操作通过查找表自适应地应用于满足基于梯度条件的样本。同样,SAO滤波器通过向解码器发送边缘偏移值来纠正量化错误。此操作消耗额外的信令位,成为网络开销。本文提出了一种基于卷积神经网络(Convolutional Neural Network, CNN)的SAO环内滤波结构,在不改变编码过程的情况下进行SAO环内滤波。实验结果表明,在广泛使用的标准视频序列上,我们提出的模型在BD-PSNR (0.408 dB)和BD-BR(3.44%)方面优于先前的最先进模型。
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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