R-PreNet: Deraining Network Based on Image Background Prior
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Published:2023-11-02
Issue:21
Volume:13
Page:11970
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ISSN:2076-3417
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Container-title:Applied Sciences
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language:en
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Short-container-title:Applied Sciences
Author:
Jiao Congyu1, Meng Fanjie1, Li Tingxuan1, Cao Ying1
Affiliation:
1. Institute of Intelligent Control and Image Engineering, Xidian University, Xi’an 710071, China
Abstract
Single image deraining (SID) has shown its importance in many advanced computer vision tasks. Although many CNN-based image deraining methods have been proposed, how to effectively remove raindrops while maintaining background structure remains a challenge that needs to be overcome. Most of the deraining work focuses on removing rain streaks, but in heavy rain images, the dense accumulation of rainwater or the rain curtain effect significantly interferes with the effective removal of rain streaks, and often introduces some artifacts that make the scene more blurry. In this paper, a novel network architecture, R-PReNet, is introduced for single image denoising with an emphasis on preserving the background structure. The framework effectively exploits the cyclic recursive structure inherent in PReNet. Additionally, the residual channel prior (RCP) and feature fusion modules have been incorporated, enhancing denoising performance by emphasizing background feature information. Compared with the previous methods, this approach offers notable improvement in rainstorm images by reducing artifacts and restoring visual details.
Funder
National Natural Science Foundation of China Scientific Research Program Serving Local Special Projects of Shaanxi Provincial Education Department of China
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference40 articles.
1. Wijesinghe, D.C., Mishra, P.K., Withanage, N.C., Abdelrahman, K., Mishra, V., Tripathi, S., and Fnais, M.S. (2023). Application of GIS, Multi-Criteria Decision-Making Techniques for Mapping Groundwater Potential Zones: A Case Study of Thalawa Division, Sri Lanka. Water, 15. 2. Josi, A., Alehdaghi, M., Cruz, R.M.O., and Granger, E. (2023, January 3–7). Multimodal Data Augmentation for Visual-Infrared Person ReID with Corrupted Data. Proceedings of the 2023 IEEE/CVF Winter Conference on Applications of Computer Vision Workshops (WACVW), Waikoloa, HI, USA. 3. Chaturvedi, S.S., Zhang, L., Yuan, X., and Weather, A. (2022, January 21–25). Pay “Attention” to Adverse Weather: Weather-aware Attention-based Object Detection. Proceedings of the 2022 26th International Conference on Streaks Recognition (ICPR), Montreal, QC, Canada. 4. Xiao, J., Long, H., Li, R., and Li, F. (2022, January 20–21). Research on Methods of Improving Robustness of Deep Learning Algorithms in Autonomous Driving. Proceedings of the 2022 IEEE International Conference on Advances in Electrical Engineering and Computer Applications (AEECA), Dalian, China. 5. Tyagi, H., Kumar, V., and Kumar, G. (2022, January 26–27). A Review Paper on Real-Time Video Analysis in Dense Environment for Surveillance System. Proceedings of the 2022 International Conference on Fourth Industrial Revolution Based Technology and Practices (ICFIRTP), Uttarakhand, India.
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