基于Retinex理论的零参考分数阶微光图像增强

Q. Zhang, Feiqi Fu, Kaixiang Zhang, Feng Lin, Jian Wang
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引用次数: 0

摘要

在光线不足的环境中拍摄的图像质量会下降。这些图像限制了机器视觉技术的展示。为了解决这个问题,许多研究人员专注于增强弱光图像。提出了一种零参考学习的微光图像增强方法。建立了一个深度网络来估计低照度图像的照度分量。我们利用原始图像和导数图来定义一个基于光照约束和先验条件的零参考损失函数。然后通过最小化损失函数来训练深度网络。根据Retinex理论得到最终图像。此外,我们使用分数阶掩模来保持图像的细节和自然度。在多个数据集上的实验表明,该算法可以实现弱光图像的增强。实验结果表明,该算法优于最先进的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Zero-Reference Fractional-Order Low-Light Image Enhancement Based on Retinex Theory
The quality of images taken in an insufficiently lighting environment is degraded. These images limit the presentation of machine vision technology. To address the issue, many researchers have focused on enhancing low-light images. This paper presents a zero-reference learning method to enhance low-light images. A deep network is built for estimating the illumination component of the low-light image. We use the original image and the derivative graph to define a zero-reference loss function based on illumination constraints and priori conditions. Then the deep network is trained by minimizing the loss function. Final image is obtained according to the Retinex theory. In addition, we use fractional-order mask to preserve image details and naturalness. Experiments on several datasets demonstrate that the proposed algorithm can achieve low-light image enhancement. Experimental results indicate that the superiority of our algorithm over state-of-the-arts algorithms.
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