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FreqMamba: Viewing Mamba from a Frequency Perspective for Image Deraining
April 16, 2024, 4:47 a.m. | Zou Zhen, Yu Hu, Zhao Feng
cs.CV updates on arXiv.org arxiv.org
Abstract: Images corrupted by rain streaks often lose vital frequency information for perception, and image deraining aims to solve this issue which relies on global and local degradation modeling. Recent studies have witnessed the effectiveness and efficiency of Mamba for perceiving global and local information based on its exploiting local correlation among patches, however, rarely attempts have been explored to extend it with frequency analysis for image deraining, limiting its ability to perceive global degradation that …
abstract arxiv cs.cv efficiency global image images information issue mamba modeling perception perspective rain solve studies type vital
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