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WeatherRemover: All-in-one Adverse Weather Removal with Multi-scale Feature Map Compression

About

Photographs taken in adverse weather conditions often suffer from blurriness, occlusion, and low brightness due to interference from rain, snow, and fog. These issues can significantly hinder the performance of subsequent computer vision tasks, making the removal of weather effects a crucial step in image enhancement. Existing methods primarily target specific weather conditions, with only a few capable of handling multiple weather scenarios. However, mainstream approaches often overlook performance considerations, resulting in large parameter sizes, long inference times, and high memory costs. In this study, we introduce the WeatherRemover model, designed to enhance the restoration of images affected by various weather conditions while balancing performance. Our model adopts a UNet-like structure with a gating mechanism and a multi-scale pyramid vision Transformer. It employs channel-wise attention derived from convolutional neural networks to optimize feature extraction, while linear spatial reduction helps curtail the computational demands of attention. The gating mechanisms, strategically placed within the feed-forward and downsampling phases, refine the processing of information by selectively addressing redundancy and mitigating its influence on learning. This approach facilitates the adaptive selection of essential data, ensuring superior restoration and maximizing efficiency. Additionally, our lightweight model achieves an optimal balance between restoration quality, parameter efficiency, computational overhead, and memory usage, distinguishing it from other multi-weather models, thereby meeting practical application demands effectively. The source code is available at https://github.com/RICKand-MORTY/WeatherRemover.

Weikai Qu, Sijun Liang, Cheng Pan, Zikuan Yang, Guanchi Zhou, Xianjun Fu, Bo Liu, Changmiao Wang, Ahmed Elazab• 2026

Related benchmarks

TaskDatasetResultRank
Image Deraining & DehazingOutdoor-Rain (test)
PSNR32.56
20
Raindrop RemovalRaindrop-A
PSNR32.99
10
Snow RemovalSnow100K L
PSNR32.26
9
Adverse Weather RemovalSnow100k
Inference Time (s)0.05
8
Adverse Weather RemovalRainDrop
Inference Time (s)0.07
8
Adverse Weather RemovalOutdoor-Rain
Inference Time (s)0.05
8
Weather RemovalWeather Removal 640x480 tensor (test)
Memory (MiB)109.6
6
Multi WeatherRaindrop-A
PSNR31.51
5
Multi-weather removalOutdoor-Rain (test)
PSNR31.52
5
Multi-Weather Snow RemovalSnow100K L
PSNR30.87
5
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