Low light combining multiscale deep learning networks and image enhancement algorithm

Xiangzhou Yu, Lin Bo, Chen Xin
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Abstract

Aiming at the lack of reference images for low-light enhancement tasks and the problems of color distortion, texture loss, blurred details, and difficulty in obtaining ground-truth images in existing algorithms, this paper proposes a multi-scale weighted feature low-light based on Retinex theory and attention mechanism. An image enhancement algorithm is proposed. The algorithm performs multi-scale feature extraction on low-light images through the feature extraction module based on the Unet architecture, generates a high-dimensional multi-scale feature map, and establishes an attention mechanism module to highlight the feature information of different scales that are beneficial to the enhanced image, and obtain a weighted image. High-dimensional feature map, the final reflection estimation module uses Retinex theory to build a network model, and generates the final enhanced image through the high-dimensional feature map. An end-to-end network architecture is designed and a set of self-regular loss functions are used to constrain the network model, which gets rid of the constraints of reference images and realizes unsupervised learning. The final experimental results show that the algorithm in this paper maintains high image details and textures while enhancing the contrast and clarity of the image, has good visual effects, can effectively enhance low-light images, and greatly improves the visual quality. Compared with other enhanced algorithms, the objective indicators PSNR and SSIM have been improved.
弱光结合多尺度深度学习网络和图像增强算法
针对弱光增强任务缺乏参考图像,现有算法存在颜色失真、纹理损失、细节模糊、难以获得真地图像等问题,提出了一种基于Retinex理论和注意机制的多尺度加权特征弱光增强方法。提出了一种图像增强算法。该算法通过基于Unet架构的特征提取模块对弱光图像进行多尺度特征提取,生成高维多尺度特征图,并建立注意机制模块突出不同尺度中有利于增强图像的特征信息,得到加权图像。高维特征映射,最终反射估计模块利用Retinex理论构建网络模型,通过高维特征映射生成最终增强图像。设计了端到端网络架构,利用一组自正则损失函数对网络模型进行约束,摆脱了参考图像的约束,实现了无监督学习。最终的实验结果表明,本文算法在增强图像对比度和清晰度的同时,保持了较高的图像细节和纹理,具有良好的视觉效果,可以有效增强弱光图像,大大提高了视觉质量。与其他增强算法相比,目标指标PSNR和SSIM都得到了提高。
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