To enhance low-light images to normally-exposed ones is highly ill-posed, namely that the mapping relationship between them is one-to-many. Previous works based on the pixel-wise reconstruction losses and deterministic processes fail to capture the complex conditional distribution of normally exposed images, which results in improper brightness, residual noise, and artifacts. In this paper, we investigate to model this one-to-many relationship via a proposed normalizing flow model. An invertible network that takes the low-light images/features as the condition and learns to map the distribution of normally exposed images into a Gaussian distribution. In this way, the conditional distribution of the normally exposed images can be well modeled, and the enhancement process, i.e., the other inference direction of the invertible network, is equivalent to being constrained by a loss function that better describes the manifold structure of natural images during the training. The experimental results on the existing benchmark datasets show our method achieves better quantitative and qualitative results, obtaining better-exposed illumination, less noise and artifact, and richer colors.
翻译:为了将低光图像提升到通常暴露的图像中,非常糟糕的是,它们之间的映射关系是一对多。 基于像素的重建损失和确定性过程的先前作品未能捕捉到通常暴露的图像的复杂有条件分布,导致不适当的亮度、残余噪音和人工制品。在本文中,我们调查通过一个拟议的正常流模式来模拟这种一对多关系。一个以低光图像/特征作为条件的可视网络,并学习将通常暴露的图像的分布映射成高斯分布图。这样,通常暴露的图像的有条件分布可以很好地建模,而增强过程,即不可忽略的网络的另一个推论方向,就等于受到损失功能的制约,这种损失功能更好地描述了培训期间自然图像的多重结构。现有基准数据集的实验结果显示我们的方法在数量和质量上取得了更好的结果,获得更好的曝光效果、较少的噪音和文物以及更丰富的颜色。