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Deep Back-Projection Networks for Single Image Super-resolution

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Previous feed-forward architectures of recently proposed deep super-resolution networks learn the features of low-resolution inputs and the non-linear mapping from those to a high-resolution output. However, this approach does not fully address the mutual dependencies of low- and high-resolution images. We propose Deep Back-Projection Networks (DBPN), the winner of two image super-resolution challenges (NTIRE2018 and PIRM2018), that exploit iterative up- and down-sampling layers. These layers are formed as a unit providing an error feedback mechanism for projection errors. We construct mutually-connected up- and down-sampling units each of which represents different types of low- and high-resolution components. We also show that extending this idea to demonstrate a new insight towards more efficient network design substantially, such as parameter sharing on the projection module and transition layer on projection step. The experimental results yield superior results and in particular establishing new state-of-the-art results across multiple data sets, especially for large scaling factors such as 8x.

Muhammad Haris, Greg Shakhnarovich, Norimichi Ukita• 2019

Related benchmarks

TaskDatasetResultRank
Image Super-resolutionSet5
PSNR38.09
507
Image Super-resolutionBSD100
PSNR (dB)32.27
210
Super-ResolutionSet5 x2
PSNR38.09
134
Super-ResolutionSet14 4x (test)
PSNR29.03
117
Super-ResolutionManga109 4x
PSNR31.74
88
Super-ResolutionManga109 2x
PSNR39.28
54
Super-ResolutionSet14 2x
PSNR34.09
51
Single Image Super-ResolutionUrban100 scale 2
PSNR32.92
40
Image Super-resolutionSet14
PSNR (dB)33.85
35
Super-ResolutionBSDS100 2x
PSNR32.31
32
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