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Lightweight Pyramid Networks for Image Deraining

About

Existing deep convolutional neural networks have found major success in image deraining, but at the expense of an enormous number of parameters. This limits their potential application, for example in mobile devices. In this paper, we propose a lightweight pyramid of networks (LPNet) for single image deraining. Instead of designing a complex network structures, we use domain-specific knowledge to simplify the learning process. Specifically, we find that by introducing the mature Gaussian-Laplacian image pyramid decomposition technology to the neural network, the learning problem at each pyramid level is greatly simplified and can be handled by a relatively shallow network with few parameters. We adopt recursive and residual network structures to build the proposed LPNet, which has less than 8K parameters while still achieving state-of-the-art performance on rain removal. We also discuss the potential value of LPNet for other low- and high-level vision tasks.

Xueyang Fu, Borong Liang, Yue Huang, Xinghao Ding, John Paisley• 2018

Related benchmarks

TaskDatasetResultRank
Image DerainingRain100L
PSNR24.88
152
Image DehazingSOTS
PSNR20.84
95
All-in-one Image RestorationSOTS + Rain100L + BSD68 Combined (test)
PSNR23.64
65
Image DenoisingBSD68 (σ = 25)
PSNR24.77
48
Image DenoisingBSD68 σ = 15
PSNR26.47
23
Image DenoisingBSD68 σ = 50
PSNR21.26
23
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