ILR-Net:基于迭代学习机制和Retinex理论相结合的微光图像增强网络。

IF 2.6 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
PLoS ONE Pub Date : 2025-02-13 eCollection Date: 2025-01-01 DOI:10.1371/journal.pone.0314541
Mohan Yin, Jianbai Yang
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引用次数: 0

摘要

在夜间或低光环境中拍摄的图像经常受到噪声和照明等外部因素的影响。针对现有的图像增强算法往往过于关注亮度的提高,而忽略了对颜色和细节特征的增强。本文提出了一种基于迭代学习机制和Retinex理论相结合的微光图像增强网络(定义为ILR-Net),以同时增强细节和颜色特征。具体来说,该网络不断学习不同维度和不同感受野的低照度图像的局部和全局特征,以实现清晰和收敛的照度估计。同时,对Retinex分解后的反射分量进行去噪处理,增强图像丰富的色彩特征。最后,将特征沿通道维度进行拼接,得到增强图像。在自适应学习子网络中,设计了扩展卷积模块、U-Net特征提取模块和自适应迭代学习模块。这些模块分别扩展网络的接受域以捕获多维特征,提取图像的整体和边缘细节,并自适应增强不同收敛阶段的特征。Retinex分解子网络重点对分解前后的反射分量进行去噪处理,得到低噪声、清晰的反射分量。此外,设计了一种高效的特征提取模块—全局特征关注来解决特征丢失问题。实验在六个常用数据集和真实环境中进行。该方法在LOL数据集上的PSNR和SSIM分别为23.7624dB和0.8653,在LOLv2-Real数据集上的PSNR和SSIM分别为26.8252dB和0.7784,与其他算法相比具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ILR-Net: Low-light image enhancement network based on the combination of iterative learning mechanism and Retinex theory.

Images captured in nighttime or low-light environments are often affected by external factors such as noise and lighting. Aiming at the existing image enhancement algorithms tend to overly focus on increasing brightness, while neglecting the enhancement of color and detailed features. This paper proposes a low-light image enhancement network based on a combination of iterative learning mechanisms and Retinex theory (defined as ILR-Net) to enhance both detail and color features simultaneously. Specifically, the network continuously learns local and global features of low-light images across different dimensions and receptive fields to achieve a clear and convergent illumination estimation. Meanwhile, the denoising process is applied to the reflection component after Retinex decomposition to enhance the image's rich color features. Finally, the enhanced image is obtained by concatenating the features along the channel dimension. In the adaptive learning sub-network, a dilated convolution module, U-Net feature extraction module, and adaptive iterative learning module are designed. These modules respectively expand the network's receptive field to capture multi-dimensional features, extract the overall and edge details of the image, and adaptively enhance features at different stages of convergence. The Retinex decomposition sub-network focuses on denoising the reflection component before and after decomposition to obtain a low-noise, clear reflection component. Additionally, an efficient feature extraction module-global feature attention is designed to address the problem of feature loss. Experiments were conducted on six common datasets and in real-world environments. The proposed method achieved PSNR and SSIM values of 23.7624dB and 0.8653 on the LOL dataset, and 26.8252dB and 0.7784 on the LOLv2-Real dataset, demonstrating significant advantages over other algorithms.

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来源期刊
PLoS ONE
PLoS ONE 生物-生物学
CiteScore
6.20
自引率
5.40%
发文量
14242
审稿时长
3.7 months
期刊介绍: PLOS ONE is an international, peer-reviewed, open-access, online publication. PLOS ONE welcomes reports on primary research from any scientific discipline. It provides: * Open-access—freely accessible online, authors retain copyright * Fast publication times * Peer review by expert, practicing researchers * Post-publication tools to indicate quality and impact * Community-based dialogue on articles * Worldwide media coverage
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