FourierMamba: Fourier Learning Integration with State Space Models for Image Deraining
Dong Li, Yidi Liu, Xueyang Fu, Senyan Xu, Zheng-Jun Zha

TL;DR
FourierMamba introduces a novel framework that integrates Mamba technique with Fourier space analysis to enhance image deraining by effectively correlating different frequency components in both spatial and channel dimensions.
Contribution
The paper proposes FourierMamba, a new method that combines Fourier transform and Mamba correlation modeling to better utilize frequency information for image deraining.
Findings
Improves rain streak removal effectiveness.
Enhances frequency correlation modeling.
Achieves superior visual restoration results.
Abstract
Image deraining aims to remove rain streaks from rainy images and restore clear backgrounds. Currently, some research that employs the Fourier transform has proved to be effective for image deraining, due to it acting as an effective frequency prior for capturing rain streaks. However, despite there exists dependency of low frequency and high frequency in images, these Fourier-based methods rarely exploit the correlation of different frequencies for conjuncting their learning procedures, limiting the full utilization of frequency information for image deraining. Alternatively, the recently emerged Mamba technique depicts its effectiveness and efficiency for modeling correlation in various domains (e.g., spatial, temporal), and we argue that introducing Mamba into its unexplored Fourier spaces to correlate different frequencies would help improve image deraining. This motivates us to…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Generative Adversarial Networks and Image Synthesis · Neural Networks and Applications
