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- Title
Research on Image Defogging Algorithm Based on Improved FFA-Net.
- Authors
Li Qinrong; Ma Chi; Guo Qiang; Hu Hui
- Abstract
Images captured under severe weather conditions, such as haze and fog, suffer from image quality degradation caused by atmospheric particle diffusion. This degradation manifests as color fading, reduced contrast, and adversely affects the performance of various computer vision tasks. To address this, this paper presents an end-to-end feature fusion attention network (FFA-Net) designed to directly restore haze-free images. By incorporating the SSIM loss into the original loss function, the proposed method effectively captures the visual disparities between the estimated defogged image and the authentic haze-free image. Additionally, it mitigates the color distortion problem inherent in the original algorithm. To address the challenge of low brightness in input images, a low illumination enhancement module is introduced, seamlessly integrated with the FFA-Net defogging method. Subsequently, a comparative analysis of different defogging algorithms is conducted using two distinct foggy datasets. Multiple evaluation metrics are employed to assess the performance of these algorithms. The findings indicate that our algorithm significantly outperforms others in terms of objective indicators such as PSNR and SSIM, as well as visual effects.
- Subjects
COMPUTER vision; ATMOSPHERIC diffusion; ALGORITHMS; WEATHER; SEVERE storms; IMAGE enhancement (Imaging systems); FREE-space optical technology; OCEAN color
- Publication
IAENG International Journal of Computer Science, 2024, Vol 51, Issue 6, p634
- ISSN
1819-656X
- Publication type
Article