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Papers/DMCNN: Dual-Domain Multi-Scale Convolutional Neural Networ...

DMCNN: Dual-Domain Multi-Scale Convolutional Neural Network for Compression Artifacts Removal

Xiaoshuai Zhang, Wenhan Yang, Yueyu Hu, Jiaying Liu

2018-06-08JPEG Artifact CorrectionImage Compression
PaperPDF

Abstract

JPEG is one of the most commonly used standards among lossy image compression methods. However, JPEG compression inevitably introduces various kinds of artifacts, especially at high compression rates, which could greatly affect the Quality of Experience (QoE). Recently, convolutional neural network (CNN) based methods have shown excellent performance for removing the JPEG artifacts. Lots of efforts have been made to deepen the CNNs and extract deeper features, while relatively few works pay attention to the receptive field of the network. In this paper, we illustrate that the quality of output images can be significantly improved by enlarging the receptive fields in many cases. One step further, we propose a Dual-domain Multi-scale CNN (DMCNN) to take full advantage of redundancies on both the pixel and DCT domains. Experiments show that DMCNN sets a new state-of-the-art for the task of JPEG artifact removal.

Results

TaskDatasetMetricValueModel
Image RestorationICB (Quality 20 Color)PSNR32.77DMCNN
Image RestorationICB (Quality 20 Color)PSNR-B33.26DMCNN
Image RestorationICB (Quality 20 Color)SSIM0.83DMCNN
Image RestorationICB (Quality 20 Grayscale)PSNR35.93DMCNN
Image RestorationICB (Quality 20 Grayscale)PSNR-B35.79DMCNN
Image RestorationICB (Quality 20 Grayscale)SSIM0.918DMCNN
Image RestorationICB (Quality 10 Grayscale)PSNR34.18DMCNN
Image RestorationICB (Quality 10 Grayscale)PSNR-B34.15DMCNN
Image RestorationICB (Quality 10 Grayscale)SSIM0.874DMCNN
Image RestorationICB (Quality 10 Color)PSNR30.85DMCNN
Image RestorationICB (Quality 10 Color)PSNR-B31.31DMCNN
Image RestorationICB (Quality 10 Color)SSIM0.796DMCNN
10-shot image generationICB (Quality 20 Color)PSNR32.77DMCNN
10-shot image generationICB (Quality 20 Color)PSNR-B33.26DMCNN
10-shot image generationICB (Quality 20 Color)SSIM0.83DMCNN
10-shot image generationICB (Quality 20 Grayscale)PSNR35.93DMCNN
10-shot image generationICB (Quality 20 Grayscale)PSNR-B35.79DMCNN
10-shot image generationICB (Quality 20 Grayscale)SSIM0.918DMCNN
10-shot image generationICB (Quality 10 Grayscale)PSNR34.18DMCNN
10-shot image generationICB (Quality 10 Grayscale)PSNR-B34.15DMCNN
10-shot image generationICB (Quality 10 Grayscale)SSIM0.874DMCNN
10-shot image generationICB (Quality 10 Color)PSNR30.85DMCNN
10-shot image generationICB (Quality 10 Color)PSNR-B31.31DMCNN
10-shot image generationICB (Quality 10 Color)SSIM0.796DMCNN

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