From Rain Generation to Rain Removal
Hong Wang, Zongsheng Yue, Qi Xie, Qian Zhao, Yefeng Zheng, Deyu Meng

TL;DR
This paper introduces a Bayesian generative model to synthesize diverse rainy images, enhancing training datasets for single image rain removal and significantly improving deraining performance.
Contribution
It proposes a novel Bayesian generative approach for rain synthesis that reduces the need for large datasets and improves deraining results.
Findings
Generated rainy images are realistic and diverse.
Enhanced deraining performance on benchmark datasets.
Reduces dependence on extensive training data.
Abstract
For the single image rain removal (SIRR) task, the performance of deep learning (DL)-based methods is mainly affected by the designed deraining models and training datasets. Most of current state-of-the-art focus on constructing powerful deep models to obtain better deraining results. In this paper, to further improve the deraining performance, we novelly attempt to handle the SIRR task from the perspective of training datasets by exploring a more efficient way to synthesize rainy images. Specifically, we build a full Bayesian generative model for rainy image where the rain layer is parameterized as a generator with the input as some latent variables representing the physical structural rain factors, e.g., direction, scale, and thickness. To solve this model, we employ the variational inference framework to approximate the expected statistical distribution of rainy image in a…
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Taxonomy
TopicsImage Enhancement Techniques · Computer Graphics and Visualization Techniques · Image and Signal Denoising Methods
