Chen Zefei, Lin Yongjie, Xu Jianmin, Lu Kai, Huang Zihao
School of Civil Engineering & Transportation, South China University of Technology, Guangzhou 510641, China.
Sensors (Basel). 2025 Sep 4;25(17):5521. doi: 10.3390/s25175521.
This paper presents a priori knowledge-based low-light image enhancement framework, termed Priori DCE (Priori Deep Curve Estimation). The priori knowledge consists of two key aspects: (1) enhancing a low-light image is an ill-posed task, as the brightness of the enhanced image corresponding to a low-light image is uncertain. To resolve this issue, we incorporate priori channels into the model to guide the brightness of the enhanced image; (2) during the enhancement of a low-light image, the brightness of pixels may increase or decrease. This paper explores the probability of a pixel's brightness increasing/decreasing as its prior enhancement/suppression probability. Intuitively, pixels with higher brightness should have a higher priori suppression probability, while pixels with lower brightness should have a higher priori enhancement probability. Inspired by this, we propose an enhancement function that adaptively adjusts the priori enhancement probability based on variations in pixel brightness. In addition, we propose the Global-Attention Block (GA Block). The GA Block ensures that, during the low-light image enhancement process, each pixel in the enhanced image is computed based on all the pixels in the low-light image. This approach facilitates interactions between all pixels in the enhanced image, thereby achieving visual balance. The experimental results on the LOLv2-Synthetic dataset demonstrate that Priori DCE has a significant advantage. Specifically, compared to the SOTA Retinexformer, the Priori DCE improves the PSNR index and SSIM index from 25.67 and 92.82 to 29.49 and 93.6, respectively, while the NIQE index decreases from 3.94 to 3.91.
本文提出了一种基于先验知识的低光照图像增强框架,称为先验深度曲线估计(Priori DCE)。先验知识包括两个关键方面:(1)增强低光照图像是一个不适定任务,因为与低光照图像对应的增强图像的亮度是不确定的。为了解决这个问题,我们将先验通道纳入模型以指导增强图像的亮度;(2)在低光照图像增强过程中,像素的亮度可能会增加或减少。本文将像素亮度增加/减少的概率作为其先验增强/抑制概率进行探讨。直观地说,亮度较高的像素应该具有较高的先验抑制概率,而亮度较低的像素应该具有较高的先验增强概率。受此启发,我们提出了一种增强函数,该函数根据像素亮度的变化自适应地调整先验增强概率。此外,我们还提出了全局注意力块(GA块)。GA块确保在低光照图像增强过程中,增强图像中的每个像素都是基于低光照图像中的所有像素计算得出的。这种方法促进了增强图像中所有像素之间的相互作用,从而实现视觉平衡。在LOLv2合成数据集上的实验结果表明,Priori DCE具有显著优势。具体而言,与当前最优的Retinexformer相比,Priori DCE将PSNR指数和SSIM指数分别从25.67和92.82提高到29.49和93.6,而NIQE指数从3.94降至3.91。