Abstract: Rainy weather significantly deteriorates the visibility of scene objects, particularly when images are captured through outdoor camera lenses or windshields. Through careful observation of numerous rainy photos, we have discerned that the images are typically affected by various rainwater artifacts such as raindrops, rain streaks, and rainy haze, which impair the image quality from near to far distances, resulting in a complex and intertwined process of image degradation. However, current deraining techniques are limited in their ability to address only one or two types of rainwater, which poses a challenge in removing the mixture of rain (MOR). In this study, we naturally associate scene depth with the MOR effect and propose an effective image deraining paradigm for the Mixture of Rain Removal, termed DEMore-Net. Going beyond the existing deraining wisdom, DEMore-Net is a joint learning paradigm that integrates depth estimation and MOR removal tasks to achieve superior rain removal. The depth information can offer additional meaningful guidance information based on distance, thus better helping DEMore-Net remove different types of rainwater. Moreover, this study explores normalization approaches in image deraining tasks and introduces a new Hybrid Normalization Block (HNB) to enhance the deraining performance of DEMore-Net. Extensive experiments conducted on synthetic datasets and real-world MOR photos fully validate the superiority of DEMore-Net. Code is available at https://github.com/yz-wang/DEMore-Net.
External IDs:dblp:journals/nn/WangYNGGW25
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