SGNet: Efficient Snow Removal Deep Network with a Global Windowing Transformer

Author:

Shan Lie1,Zhang Haoxiang2,Cheng Bodong3

Affiliation:

1. Anhui Communications Vocational & Technical College, Hefei 230051, China

2. Shanghai University, Shanghai 200444, China

3. East China Normal University, Shanghai 200062, China

Abstract

Image restoration under adverse weather conditions poses a challenging task. Previous research efforts have predominantly focused on eliminating rain and fog phenomena from images. However, snow, being another common atmospheric occurrence, also significantly impacts advanced computer vision tasks such as object detection and semantic segmentation. Recently, there has been a surge of methods specifically targeting snow removal, with the majority employing visual Transformers as the backbone network to enhance restoration effectiveness. Nevertheless, due to the quadratic computations required by Transformers to model long-range dependencies, this significantly escalates the time and space consumption of deep learning models. To address this issue, this paper proposes an efficient snow removal Transformer with a global windowing network (SGNet). This method forgoes the localized windowing strategy of previous visual Transformers, opting instead to partition the image into multiple low-resolution subimages containing global information using wavelet sampling, thereby ensuring higher performance while reducing computational overhead. Extensive experimentation demonstrates that our approach achieves outstanding performance across a wide range of benchmark datasets and can rival methods employing CNNs in terms of computational cost.

Publisher

MDPI AG

Reference26 articles.

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2. Zheng, X., Liao, Y., Guo, W., Fu, X., and Ding, X. (2013, January 3–7). Single-image-based rain and snow removal using multi-guided filter. Proceedings of the ICONIP, Daegu, Republic of Korea.

3. Pei, S.C., Tsai, Y.T., and Lee, C.Y. (2014, January 14–18). Removing rain and snow in a single image using saturation and visibility features. Proceedings of the ICME Workshop, Chengdu, China.

4. A hierarchical approach for rain or snow removing in a single color image;Wang;IEEE Trans. Image Process.,2017

5. Yu, S., Zhao, Y., Mou, Y., Wu, J., Han, L., Yang, X., and Zhao, B. (December, January 28). Content-adaptive rain and snow removal algorithms for single image. Proceedings of the International Symposium on Neural Networks, Macao, China.

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