Images taken under low-light conditions tend to suffer from poor visibility, which can decrease image quality and even reduce the performance of the downstream tasks. It is hard for a CNN-based method to learn generalized features that can recover normal images from the ones under various unknow low-light conditions. In this paper, we propose to incorporate the contrastive learning into an illumination correction network to learn abstract representations to distinguish various low-light conditions in the representation space, with the purpose of enhancing the generalizability of the network. Considering that light conditions can change the frequency components of the images, the representations are learned and compared in both spatial and frequency domains to make full advantage of the contrastive learning. The proposed method is evaluated on LOL and LOL-V2 datasets, the results show that the proposed method achieves better qualitative and quantitative results compared with other state-of-the-arts.
翻译:在低光条件下拍摄的图像往往会受到能见度差的影响,这可能会降低图像质量,甚至减少下游任务的性能。传统的基于CNN的方法难以学习到能从各种未知低光条件下的图片中恢复正常图像的通用特征。本文提出将对比学习融入照度校正网络中,以学习抽象特征,以区分表示空间中的各种低光条件,从而提高网络的泛化能力。考虑到光照条件可以改变图像的频率分量,因此在空域和频域中分别学习和比较表示,充分利用了对比学习。提出的方法在LOL和LOL-V2数据集上进行了评估,结果表明,与其他最先进技术相比,所提出的方法在定性和定量方面都取得了更好的结果。