CNN-Based Post-Processing Filter for Video Compression with Multi-Scale Feature Representation

Zhanyuan Qi, Cheolkon Jung, Yang Liu, Ming Li
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引用次数: 1

Abstract

In this paper, we propose a convolutional neural network (CNN)-based post-processing filter for video compression with multi-scale feature representation. The discrete wavelet transform (DWT) decomposes an image into multi-frequency and multi-directional sub-bands, and can figure out artifacts caused by video compression with multi-scale feature representation. Thus, we combine DWT with CNN and construct two sub-networks: Step-like sub-band network (SLSB) and mixed enhancement network (ME). SLSB takes the wavelet subbands as input, and feeds them into the Res2Net group (R2NG) from high frequency to low frequency. R2NG consists of Res2Net modules and adopts spatial and channel attentions to adaptively enhance features. We combine the high frequency sub-band output with the low frequency sub-band in R2NG to capture multi-scale features. ME uses mixed convolution composed of dilated convolution and standard convolution as the basic block to expand the receptive field without blind spots in dilated convolution and further improve the reconstruction quality. Experimental results demonstrate that the proposed CNN filter achieves average 2.13%, 2.63%, 2.99%, 4.8%, 3.72% and 4.5% BD-rate reductions over VTM 11.0-NNVC anchor for Y channel on A1, A2, B, C, D and E classes of the common test conditions (CTC) in AI, RA and LDP configurations, respectively.
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基于cnn的多尺度特征表示视频压缩后处理滤波器
在本文中,我们提出了一种基于卷积神经网络(CNN)的多尺度特征表示视频压缩后处理滤波器。离散小波变换(DWT)将图像分解成多频、多方向的子带,通过多尺度特征表示来识别视频压缩产生的伪影。因此,我们将DWT与CNN相结合,构建了两个子网络:阶梯状子带网络(SLSB)和混合增强网络(ME)。SLSB以小波子带作为输入,从高频到低频馈送到Res2Net组(R2NG)。R2NG由Res2Net模块组成,采用空间和通道关注自适应增强特征。我们将R2NG中的高频子带输出与低频子带输出相结合,以捕获多尺度特征。ME采用扩展卷积和标准卷积组成的混合卷积作为基本块,扩大了扩展卷积的感受野,没有盲点,进一步提高了重建质量。实验结果表明,在AI、RA和LDP配置的常用测试条件(CTC)的A1、A2、B、C、D和E类上,本文提出的CNN滤波器比Y频道的VTM 11.0-NNVC锚点的bd率分别平均降低2.13%、2.63%、2.99%、4.8%、3.72%和4.5%。
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