MBA-RainGAN: Multi-branch Attention Generative Adversarial Network for
Mixture of Rain Removal from Single Images
- URL: http://arxiv.org/abs/2005.10582v2
- Date: Sat, 23 May 2020 00:21:00 GMT
- Title: MBA-RainGAN: Multi-branch Attention Generative Adversarial Network for
Mixture of Rain Removal from Single Images
- Authors: Yiyang Shen, Yidan Feng, Sen Deng, Dong Liang, Jing Qin, Haoran Xie,
Mingqiang Wei
- Abstract summary: Rain severely hampers the visibility of scene objects when images are captured through glass in heavily rainy days.
We observe three intriguing phenomenons that, 1) rain is a mixture of raindrops, rain streaks and rainy haze; 2) the depth from the camera determines the degrees of object visibility; and 3) raindrops on the glass randomly affect the object visibility of the whole image space.
- Score: 24.60495609529114
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Rain severely hampers the visibility of scene objects when images are
captured through glass in heavily rainy days. We observe three intriguing
phenomenons that, 1) rain is a mixture of raindrops, rain streaks and rainy
haze; 2) the depth from the camera determines the degrees of object visibility,
where objects nearby and faraway are visually blocked by rain streaks and rainy
haze, respectively; and 3) raindrops on the glass randomly affect the object
visibility of the whole image space. We for the first time consider that, the
overall visibility of objects is determined by the mixture of rain (MOR).
However, existing solutions and established datasets lack full consideration of
the MOR. In this work, we first formulate a new rain imaging model; by then, we
enrich the popular RainCityscapes by considering raindrops, named
RainCityscapes++. Furthermore, we propose a multi-branch attention generative
adversarial network (termed an MBA-RainGAN) to fully remove the MOR. The
experiment shows clear visual and numerical improvements of our approach over
the state-of-the-arts on RainCityscapes++. The code and dataset will be
available.
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