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Image Super-Resolution via Dual-State Recurrent Networks

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Advances in image super-resolution (SR) have recently benefited significantly from rapid developments in deep neural networks. Inspired by these recent discoveries, we note that many state-of-the-art deep SR architectures can be reformulated as a single-state recurrent neural network (RNN) with finite unfoldings. In this paper, we explore new structures for SR based on this compact RNN view, leading us to a dual-state design, the Dual-State Recurrent Network (DSRN). Compared to its single state counterparts that operate at a fixed spatial resolution, DSRN exploits both low-resolution (LR) and high-resolution (HR) signals jointly. Recurrent signals are exchanged between these states in both directions (both LR to HR and HR to LR) via delayed feedback. Extensive quantitative and qualitative evaluations on benchmark datasets and on a recent challenge demonstrate that the proposed DSRN performs favorably against state-of-the-art algorithms in terms of both memory consumption and predictive accuracy.

Wei Han, Shiyu Chang, Ding Liu, Mo Yu, Michael Witbrock, Thomas S. Huang• 2018

Related benchmarks

TaskDatasetResultRank
Super-ResolutionSet5
PSNR37.66
785
Image Super-resolutionSet5
PSNR37.66
692
Super-ResolutionUrban100
PSNR30.97
652
Super-ResolutionSet14
PSNR33.15
613
Image Super-resolutionSet5 (test)
PSNR37.66
566
Single Image Super-ResolutionUrban100
PSNR30.97
500
Image Super-resolutionSet14
PSNR33.15
289
Image Super-resolutionBSD100
PSNR (dB)32.1
271
Super-ResolutionSet14 (test)
PSNR33.15
254
Super-ResolutionSet5 (test)
PSNR33.88
192
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