Optical flow estimation is a well-studied topic for automated driving applications. Many outstanding optical flow estimation methods have been proposed, but they become erroneous when tested in challenging scenarios that are commonly encountered. Despite the increasing use of fisheye cameras for near-field sensing in automated driving, there is very limited literature on optical flow estimation with strong lens distortion. Thus we propose and evaluate training strategies to improve a learning-based optical flow algorithm by leveraging the only existing fisheye dataset with optical flow ground truth. While trained with synthetic data, the model demonstrates strong capabilities to generalize to real world fisheye data. The other challenge neglected by existing state-of-the-art algorithms is low light. We propose a novel, generic semi-supervised framework that significantly boosts performances of existing methods in such conditions. To the best of our knowledge, this is the first approach that explicitly handles optical flow estimation in low light.
翻译:光流估计是自动化驾驶应用中一个经过充分研究的专题。许多杰出的光流估计方法已经提出,但如果在通常遇到的挑战性假设中进行测试,它们就会变成错误。尽管在自动驾驶中越来越多地使用鱼眼照相机进行近地遥感,但关于光流估计的文献却非常有限,而且有明显的镜头扭曲。因此,我们提出并评价培训战略,以便利用光流地面光流真理的现有唯一的鱼眼数据集来改进基于学习的光流算法。模型在接受合成数据培训时,显示出向真实世界的鱼眼数据推广的强大能力。另一个被现有最新算法忽视的挑战是低光。我们提出了一个新颖的、通用的半监督框架,大大提升了在这种条件下现有方法的性能。我们最了解的是,这是在低光下明确处理光流估计的第一个方法。