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Papers/Multi-Scale Progressive Fusion Network for Single Image De...

Multi-Scale Progressive Fusion Network for Single Image Deraining

Kui Jiang, Zhongyuan Wang, Peng Yi, Chen Chen, Baojin Huang, Yimin Luo, Jiayi Ma, Junjun Jiang

2020-03-24CVPR 2020 6Rain RemovalSingle Image Deraining
PaperPDFCodeCodeCode(official)

Abstract

Rain streaks in the air appear in various blurring degrees and resolutions due to different distances from their positions to the camera. Similar rain patterns are visible in a rain image as well as its multi-scale (or multi-resolution) versions, which makes it possible to exploit such complementary information for rain streak representation. In this work, we explore the multi-scale collaborative representation for rain streaks from the perspective of input image scales and hierarchical deep features in a unified framework, termed multi-scale progressive fusion network (MSPFN) for single image rain streak removal. For similar rain streaks at different positions, we employ recurrent calculation to capture the global texture, thus allowing to explore the complementary and redundant information at the spatial dimension to characterize target rain streaks. Besides, we construct multi-scale pyramid structure, and further introduce the attention mechanism to guide the fine fusion of this correlated information from different scales. This multi-scale progressive fusion strategy not only promotes the cooperative representation, but also boosts the end-to-end training. Our proposed method is extensively evaluated on several benchmark datasets and achieves state-of-the-art results. Moreover, we conduct experiments on joint deraining, detection, and segmentation tasks, and inspire a new research direction of vision task-driven image deraining. The source code is available at \url{https://github.com/kuihua/MSPFN}.

Results

TaskDatasetMetricValueModel
Rain RemovalTest1200PSNR32.39MSPFN
Rain RemovalTest1200SSIM0.916MSPFN
Rain RemovalRain100HPSNR28.66MSPFN
Rain RemovalRain100HSSIM0.86MSPFN
Rain RemovalTest2800PSNR32.82MSPFN
Rain RemovalTest2800SSIM0.93MSPFN
Rain RemovalTest100PSNR27.5MSPFN
Rain RemovalTest100SSIM0.876MSPFN
Rain RemovalRain100LPSNR32.4MSPFN
Rain RemovalRain100LSSIM0.933MSPFN

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