Feng Wei, Wu Guiming, Zhou Shiqi, Li Xingang
Appl Opt. 2023 Sep 1;62(25):6577-6584. doi: 10.1364/AO.491768.
Low-light images often suffer from a variety of degradation problems such as loss of detail, color distortions, and prominent noise. In this paper, the Retinex-Net model and loss function with color restoration are proposed to reduce color distortion in low-light image enhancement. The model trains the decom-net and color recovery-net to achieve decomposition of low-light images and color restoration of reflected images, respectively. First, a convolutional neural network and the designed loss functions are used in the decom-net to decompose the low-light image pair into an optimal reflection image and illumination image as the input of the network, and the reflection image after normal light decomposition is taken as the label. Then, an end-to-end color recovery network with a simplified model and time complexity is learned and combined with the color recovery loss function to obtain the correction reflection map with higher perception quality, and gamma correction is applied to the decomposed illumination image. Finally, the corrected reflection image and the illumination image are synthesized to get the enhanced image. The experimental results show that the proposed network model has lower brightness-order-error (LOE) and natural image quality evaluator (NIQE) values, and the average LOE and NIQE values of the low-light dataset images can be reduced to 942 and 6.42, respectively, which significantly improves image quality compared with other low-light enhancement methods. Generally, our proposed method can effectively improve image illuminance and restore color information in the end-to-end learning process of low-light images.
低光照图像经常会遭受各种退化问题,如细节丢失、颜色失真和明显的噪声。本文提出了具有颜色恢复功能的Retinex-Net模型和损失函数,以减少低光照图像增强中的颜色失真。该模型分别训练分解网络(decom-net)和颜色恢复网络(color recovery-net)来实现低光照图像的分解和反射图像的颜色恢复。首先,在分解网络中使用卷积神经网络和设计的损失函数,将低光照图像对分解为最优反射图像和光照图像作为网络输入,并将正常光照分解后的反射图像作为标签。然后,学习一个具有简化模型和时间复杂度的端到端颜色恢复网络,并结合颜色恢复损失函数,以获得具有更高感知质量的校正反射图,并对分解后的光照图像应用伽马校正。最后,将校正后的反射图像和光照图像合成以得到增强图像。实验结果表明,所提出的网络模型具有较低的亮度阶误差(LOE)和自然图像质量评估器(NIQE)值,低光照数据集图像的平均LOE和NIQE值可分别降至942和6.42,与其他低光照增强方法相比,显著提高了图像质量。总体而言,我们提出的方法能够在低光照图像的端到端学习过程中有效提高图像照度并恢复颜色信息。