Self-Supervised Monocular Depth Estimation in the Dark: Towards Data Distribution Compensation

Self-Supervised Monocular Depth Estimation in the Dark: Towards Data Distribution Compensation

Haolin Yang, Chaoqiang Zhao, Lu Sheng, Yang Tang

Proceedings of the Thirty-Third International Joint Conference on Artificial Intelligence
Main Track. Pages 1561-1569. https://doi.org/10.24963/ijcai.2024/173

Nighttime self-supervised monocular depth estimation has received increasing attention in recent years. However, using night images for self-supervision is unreliable because the photometric consistency assumption is usually violated in the videos taken under complex lighting conditions. Even with domain adaptation or photometric loss repair, performance is still limited by the poor supervision of night images on trainable networks. In this paper, we propose a self-supervised nighttime monocular depth estimation method that does not use any night images during training. Our framework utilizes day images as a stable source for self-supervision and applies physical priors (e.g., wave optics, reflection model and read-shot noise model) to compensate for some key day-night differences. With day-to-night data distribution compensation, our framework can be trained in an efficient one-stage self-supervised manner. Though no nighttime images are considered during training, qualitative and quantitative results demonstrate that our method achieves SoTA depth estimating results on the challenging nuScenes-Night and RobotCar-Night compared with existing methods.
Keywords:
Computer Vision: CV: 3D computer vision
Computer Vision: CV: Other
Computer Vision: CV: Scene analysis and understanding   
Computer Vision: CV: Transfer, low-shot, semi- and un- supervised learning