Low-Light Image Enhancement Using Gamma Learning And Attention-Enabled Encoder-Decoder Networks
Bibhabasu Debnath, Sahana Ray, and Sanjay Ghosh

TL;DR
This paper presents GAtED, a dual-stage deep learning framework that combines adaptive gamma correction with attention-based encoder-decoder networks to enhance low-light images, improving both brightness and detail while reducing artifacts.
Contribution
The proposed GAtED method uniquely integrates pixel-wise gamma learning with attention-enhanced refinement in a simple, efficient architecture for low-light image enhancement.
Findings
Achieves state-of-the-art PSNR and SSIM on multiple datasets.
Produces images with fewer artifacts and better perceptual quality.
Outperforms existing methods in both quantitative and qualitative evaluations.
Abstract
Images acquired in low-light environments present significant obstacles for computer vision systems and human perception, especially for applications requiring accurate object recognition and scene analysis. Such images typically manifest multiple quality issues: amplified noise, inadequate scene illumination, contrast reduction, color distortion, and loss of details. While recent deep learning methods have shown promise, developing simple and efficient frameworks that naturally integrate global illumination adjustment with local detail refinement continues to be an important objective. To this end, we introduce a dual-stage deep learning architecture that combines adaptive gamma correction with attention-enhanced refinement to address these fundamental limitations. The first stage uses an Adaptive Gamma Correction Module (AGCM) to learn suitable gamma values for each pixel based on…
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