The visual quality of photographs taken under imperfect lightness conditions can be degenerated by multiple factors, e.g., low lightness, imaging noise, color distortion and so on. Current low-light image enhancement models focus on the improvement of low lightness only, or simply deal with all the degeneration factors as a whole, therefore leading to a sub-optimal performance. In this paper, we propose to decouple the enhancement model into two sequential stages. The first stage focuses on improving the scene visibility based on a pixel-wise non-linear mapping. The second stage focuses on improving the appearance fidelity by suppressing the rest degeneration factors. The decoupled model facilitates the enhancement in two aspects. On the one hand, the whole low-light enhancement can be divided into two easier subtasks. The first one only aims to enhance the visibility. It also helps to bridge the large intensity gap between the low-light and normal-light images. In this way, the second subtask can be shaped as the local appearance adjustment. On the other hand, since the parameter matrix learned from the first stage is aware of the lightness distribution and the scene structure, it can be incorporated into the second stage as the complementary information. In the experiments, our model demonstrates the state-of-the-art performance in both qualitative and quantitative comparisons, compared with other low-light image enhancement models. In addition, the ablation studies also validate the effectiveness of our model in multiple aspects, such as model structure and loss function. The trained model is available at https://github.com/hanxuhfut/Decoupled-Low-light-Image-Enhancement.
翻译:在不完善的光度条件下拍摄的照片的视觉质量可能因多种因素而退化,例如低光度、成像噪音、色彩扭曲等等。当前低光图像增强模型只注重改进低光度,或仅处理整个变异因素,从而导致亚优性性性能。在本文中,我们提议将增强模型分解为两个相继阶段。第一阶段的重点是根据像素非线性绘图来改善场景可见度。第二阶段的重点是通过抑制余生因素来改善外观忠诚性。分光化的多光化图像增强模型促进了两个方面的增强。一方面,整个低光增强可分为两个较容易的子塔。首先,目的只是提高能见度。我们还提议将增强模型与正常光度图像之间的巨大强度差距分解为两个相继阶段。在另一个阶段,从第一阶段学到的参数矩阵将光度分布和量化性能的功能分为两个部分。在模拟的模型中,在模拟中,将精度性能/定量性能的功能作为模拟性能的对比性能,在模拟中,将光度结构中,在模拟中,将精细度结构的性变化的性化模型和质性结构的性变化结构的性变化性能演化的性能演化性能演化性能演化性能演化性能演化性能演化了我们的性能演化模型。