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A neural network approach to remove rain using reconstruction and feature losses

Authors
Javed, KamranHussain, GhulamShaukat, FurqanHwang, Seong Oun
Issue Date
Sep-2020
Publisher
SPRINGER LONDON LTD
Keywords
Rain removal; Generative adversarial network; Structural similarity loss; UNET; Pix2Pix
Citation
NEURAL COMPUTING & APPLICATIONS, v.32, no.17, pp.13129 - 13138
Journal Title
NEURAL COMPUTING & APPLICATIONS
Volume
32
Number
17
Start Page
13129
End Page
13138
URI
https://scholarworks.bwise.kr/hongik/handle/2020.sw.hongik/14105
DOI
10.1007/s00521-019-04558-2
ISSN
0941-0643
Abstract
Rain streaks can eclipse some information of an image taken during rainfall which can degrade the performance of a vision system. While existing rain removing methods can recover the semantic structure, they lack natural texture recovery. The aim of this work is to recover the hidden structure and texture under the rain streaks with fine details. We propose a novel generative adversarial network with two discriminators to remove rain called rain removal generative adversarial network, where a combination of reconstruction, feature and adversarial losses is used for low level, structural and natural recovery, respectively. We have found that exploiting low-level loss with high-level structural similarity loss as a reconstruction loss is quite effective in attaining visually plausible and consistent texture. Qualitative and quantitative evaluations on our synthetically created dataset and a benchmark dataset show substantial performance gain than state-of-the-art rain removing methods.
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College of Science and Technology > Department of Computer and Information Communications Engineering > 1. Journal Articles

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