Multi-Scale Attention Feature Enhancement Network for Single Image Dehazing
Author:
Dong Weida12, Wang Chunyan1, Sun Hao1, Teng Yunjie1, Xu Xiping1
Affiliation:
1. School of Opto-Electronic Engineering, Changchun University of Science and Technology, Changchun 130022, China 2. Zhongshan Institute of Changchun University of Science and Technology, Zhongshan 528437, China
Abstract
Aiming to solve the problem of color distortion and loss of detail information in most dehazing algorithms, an end-to-end image dehazing network based on multi-scale feature enhancement is proposed. Firstly, the feature extraction enhancement module is used to capture the detailed information of hazy images and expand the receptive field. Secondly, the channel attention mechanism and pixel attention mechanism of the feature fusion enhancement module are used to dynamically adjust the weights of different channels and pixels. Thirdly, the context enhancement module is used to enhance the context semantic information, suppress redundant information, and obtain the haze density image with higher detail. Finally, our method removes haze, preserves image color, and ensures image details. The proposed method achieved a PSNR score of 33.74, SSIM scores of 0.9843 and LPIPS distance of 0.0040 on the SOTS-outdoor dataset. Compared with representative dehazing methods, it demonstrates better dehazing performance and proves the advantages of the proposed method on synthetic hazy images. Combined with dehazing experiments on real hazy images, the results show that our method can effectively improve dehazing performance while preserving more image details and achieving color fidelity.
Funder
Jilin Province Science and Technology Development Plan Project Jilin Province Industrial Technology Research and Development Project
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
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