DST-Net: A Dual-Stream Transformer with Illumination-Independent Feature Guidance and Multi-Scale Spatial Convolution for Low-Light Image Enhancement
Yicui Shi, Yuhan Chen, Xiangfei Huang, Zhenguo Wang, Wenxuan Yu, Ying Fang

TL;DR
DST-Net is a novel low-light image enhancement model that uses dual-stream transformers, illumination-agnostic priors, and multi-scale convolutions to improve image quality while preserving details.
Contribution
The paper introduces DST-Net, combining a dual-stream transformer architecture with illumination-independent priors and multi-scale spatial convolutions for superior low-light enhancement.
Findings
Achieves a PSNR of 25.64 dB on the LOL dataset.
Demonstrates robust cross-scene generalization on the LSRW dataset.
Outperforms existing methods in subjective and objective evaluations.
Abstract
Low-light image enhancement aims to restore the visibility of images captured by visual sensors in dim environments by addressing their inherent signal degradations, such as luminance attenuation and structural corruption. Although numerous algorithms attempt to improve image quality, existing methods often cause a severe loss of intrinsic signal priors. To overcome these challenges, we propose a Dual-Stream Transformer Network (DST-Net) based on illumination-agnostic signal prior guidance and multi-scale spatial convolutions. First, to address the loss of critical signal features under low-light conditions, we design a feature extraction module. This module integrates Difference of Gaussians (DoG), LAB color space transformations, and VGG-16 for texture extraction, utilizing decoupled illumination-agnostic features as signal priors to continuously guide the enhancement process. Second,…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Processing Techniques · Advanced Image Fusion Techniques
