FBRNN - feedback recurrent neural network for extreme image super-resolution.

CVPR Workshops(2020)

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摘要
Single image extreme Super Resolution (SR) is a difficult task as scale factor in the order of 10X or greater is typically attempted. For instance, in the case of 16x upscale of an image, a single pixel from a low resolution image gets expanded to a 16x16 image patch. Such attempts often result fuzzy quality and loss in details in reconstructed images. To handle these difficulties, we propose a network architecture composed of a series of connected blocks in recurrent and feedback fashions for enhanced SR reconstruction. By use of recurrent network, an SR image is refined over a sequence of enhancement stages in coarse to fine manner. Additionally, each stage involves back projection of SR image to LR images for continuously being refined during the sequence. According to the preliminary results of NTIRE 2020 Perceptual Extreme SR challenge, our team (KU ISPLB) secured 6th place by PSNR and 7th place by SSIM among all participants.
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关键词
single image extreme super resolution,single pixel,extreme image super-resolution,feedback recurrent neural network,NTIRE 2020 Perceptual Extreme SR challenge,SR image,recurrent network,enhanced SR reconstruction,recurrent feedback fashions,network architecture,reconstructed images,image patch,low resolution image
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