Deep learning-based methods for low-light image enhancement typically require enormous paired training data, which are impractical to capture in real-world scenarios. Recently, unsupervised approaches have been explored to eliminate the reliance on paired training data. However, they perform erratically in diverse real-world scenarios due to the absence of priors. To address this issue, we propose an unsupervised low-light image enhancement method based on an effective prior termed histogram equalization prior (HEP). Our work is inspired by the interesting observation that the feature maps of histogram equalization enhanced image and the ground truth are similar. Specifically, we formulate the HEP to provide abundant texture and luminance information. Embedded into a Light Up Module (LUM), it helps to decompose the low-light images into illumination and reflectance maps, and the reflectance maps can be regarded as restored images. However, the derivation based on Retinex theory reveals that the reflectance maps are contaminated by noise. We introduce a Noise Disentanglement Module (NDM) to disentangle the noise and content in the reflectance maps with the reliable aid of unpaired clean images. Guided by the histogram equalization prior and noise disentanglement, our method can recover finer details and is more capable to suppress noise in real-world low-light scenarios. Extensive experiments demonstrate that our method performs favorably against the state-of-the-art unsupervised low-light enhancement algorithms and even matches the state-of-the-art supervised algorithms.
翻译:深造低光图像增强的深层学习方法通常需要巨大的双向培训数据,这些数据在现实世界情景中不切实际。最近,我们探索了未经监督的方法,以消除对配对培训数据的依赖性。然而,由于缺乏前科,这些方法在不同的现实情景中表现不定。为了解决这一问题,我们提议了一种未经监督的低光图像增强方法,其基础是有效的、先前称为直方平准(HEP)的有效直方图平准(HEP)。我们的工作受到以下有趣的观察的启发,即直方平准图像和地面真相的特征图是相似的。具体地说,我们设计HEP,以提供丰富的文本和亮亮信息。嵌入一个光上模模模模块(LUM),有助于将低光光图像分解成明和反射图,而反光图则根据Retinex理论推断,反射图被噪音平均匀图被污染。我们引入了噪音分解分解的模块(NDM),甚至将不清晰的噪音和内容分解,我们能够反射的平整的平级图像的平整。