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Papers/Residual Dense Network for Image Super-Resolution

Residual Dense Network for Image Super-Resolution

Yulun Zhang, Yapeng Tian, Yu Kong, Bineng Zhong, Yun Fu

2018-02-24CVPR 2018 6Super-ResolutionColor Image DenoisingImage Super-Resolution
PaperPDFCodeCodeCode(official)CodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCodeCode

Abstract

A very deep convolutional neural network (CNN) has recently achieved great success for image super-resolution (SR) and offered hierarchical features as well. However, most deep CNN based SR models do not make full use of the hierarchical features from the original low-resolution (LR) images, thereby achieving relatively-low performance. In this paper, we propose a novel residual dense network (RDN) to address this problem in image SR. We fully exploit the hierarchical features from all the convolutional layers. Specifically, we propose residual dense block (RDB) to extract abundant local features via dense connected convolutional layers. RDB further allows direct connections from the state of preceding RDB to all the layers of current RDB, leading to a contiguous memory (CM) mechanism. Local feature fusion in RDB is then used to adaptively learn more effective features from preceding and current local features and stabilizes the training of wider network. After fully obtaining dense local features, we use global feature fusion to jointly and adaptively learn global hierarchical features in a holistic way. Extensive experiments on benchmark datasets with different degradation models show that our RDN achieves favorable performance against state-of-the-art methods.

Results

TaskDatasetMetricValueModel
Super-ResolutionSet14 - 4x upscalingPSNR28.81RDN
Super-ResolutionSet14 - 4x upscalingSSIM0.7871RDN
Super-ResolutionIXIPSNR 2x T2w38.75RDN
Super-ResolutionIXIPSNR 4x T2w31.45RDN
Super-ResolutionIXISSIM 4x T2w0.9324RDN
Super-ResolutionIXISSIM for 2x T2w0.9838RDN
Super-ResolutionManga109 - 4x upscalingPSNR31RDN
Super-ResolutionManga109 - 4x upscalingSSIM0.9151RDN
Super-ResolutionUrban100 - 4x upscalingPSNR26.61RDN
Super-ResolutionUrban100 - 4x upscalingSSIM0.8028RDN
Super-ResolutionBSD100 - 4x upscalingPSNR27.72RDN
Super-ResolutionBSD100 - 4x upscalingSSIM0.7419RDN
DenoisingCBSD68 sigma50PSNR28.34Residual Dense Network +
Image Super-ResolutionSet14 - 4x upscalingPSNR28.81RDN
Image Super-ResolutionSet14 - 4x upscalingSSIM0.7871RDN
Image Super-ResolutionIXIPSNR 2x T2w38.75RDN
Image Super-ResolutionIXIPSNR 4x T2w31.45RDN
Image Super-ResolutionIXISSIM 4x T2w0.9324RDN
Image Super-ResolutionIXISSIM for 2x T2w0.9838RDN
Image Super-ResolutionManga109 - 4x upscalingPSNR31RDN
Image Super-ResolutionManga109 - 4x upscalingSSIM0.9151RDN
Image Super-ResolutionUrban100 - 4x upscalingPSNR26.61RDN
Image Super-ResolutionUrban100 - 4x upscalingSSIM0.8028RDN
Image Super-ResolutionBSD100 - 4x upscalingPSNR27.72RDN
Image Super-ResolutionBSD100 - 4x upscalingSSIM0.7419RDN
3D ArchitectureCBSD68 sigma50PSNR28.34Residual Dense Network +
3D Object Super-ResolutionSet14 - 4x upscalingPSNR28.81RDN
3D Object Super-ResolutionSet14 - 4x upscalingSSIM0.7871RDN
3D Object Super-ResolutionIXIPSNR 2x T2w38.75RDN
3D Object Super-ResolutionIXIPSNR 4x T2w31.45RDN
3D Object Super-ResolutionIXISSIM 4x T2w0.9324RDN
3D Object Super-ResolutionIXISSIM for 2x T2w0.9838RDN
3D Object Super-ResolutionManga109 - 4x upscalingPSNR31RDN
3D Object Super-ResolutionManga109 - 4x upscalingSSIM0.9151RDN
3D Object Super-ResolutionUrban100 - 4x upscalingPSNR26.61RDN
3D Object Super-ResolutionUrban100 - 4x upscalingSSIM0.8028RDN
3D Object Super-ResolutionBSD100 - 4x upscalingPSNR27.72RDN
3D Object Super-ResolutionBSD100 - 4x upscalingSSIM0.7419RDN
16kSet14 - 4x upscalingPSNR28.81RDN
16kSet14 - 4x upscalingSSIM0.7871RDN
16kIXIPSNR 2x T2w38.75RDN
16kIXIPSNR 4x T2w31.45RDN
16kIXISSIM 4x T2w0.9324RDN
16kIXISSIM for 2x T2w0.9838RDN
16kManga109 - 4x upscalingPSNR31RDN
16kManga109 - 4x upscalingSSIM0.9151RDN
16kUrban100 - 4x upscalingPSNR26.61RDN
16kUrban100 - 4x upscalingSSIM0.8028RDN
16kBSD100 - 4x upscalingPSNR27.72RDN
16kBSD100 - 4x upscalingSSIM0.7419RDN

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