Learning Interpretable End-to-End Vision-Based Motion Planning for Autonomous Driving with Optical Flow Distillation

Hengli Wang,Peide Cai,Yuxiang Sun,Lujia Wang,Ming Liu,Hengli Wang,Peide Cai,Yuxiang Sun,Lujia Wang,Ming Liu

Recently, deep-learning based approaches have achieved impressive performance for autonomous driving. However, end-to-end vision-based methods typically have limited interpretability, making the behaviors of the deep networks difficult to explain. Hence, their potential applications could be limited in practice. To address this problem, we propose an interpretable end-to-end vision-based motion pl...