Affiliation:
1. School of Communication and Information Engineering, Xi’an University of Science and Technology, Xi’an 710054, China
Abstract
Haze weather deteriorates image quality, causing images to become blurry with reduced contrast. This makes object edges and features unclear, leading to lower detection accuracy and reliability. To enhance haze removal effectiveness, we propose an image dehazing and fusion network based on the encoder–decoder paradigm (UIDF-Net). This network leverages the Image Fusion Module (MDL-IFM) to fuse the features of dehazed images, producing clearer results. Additionally, to better extract haze information, we introduce a haze encoder (Mist-Encode) that effectively processes different frequency features of images, improving the model’s performance in image dehazing tasks. Experimental results demonstrate that the proposed model achieves superior dehazing performance compared to existing algorithms on outdoor datasets.
Funder
Shaanxi Province’s key research and development plan
Xi’an Science and Technology Plan Project University Institute Science and Technology Personnel Service Enterprise Project
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