Authors
Zehua Zhang, Ashish Tawari, Sujitha Martin, David Crandall
Publication date
2020/5/31
Conference
2020 IEEE International Conference on Robotics and Automation (ICRA)
Pages
8920-8927
Publisher
IEEE
Description
A vehicle driving along the road is surrounded by many objects, but only a small subset of them influence the driver's decisions and actions. Learning to estimate the importance of each object on the driver's real-time decision-making may help better understand human driving behavior and lead to more reliable autonomous driving systems. Solving this problem requires models that understand the interactions between the ego-vehicle and the surrounding objects. However, interactions among other objects in the scene can potentially also be very helpful, e.g., a pedestrian beginning to cross the road between the ego-vehicle and the car in front will make the car in front less important. We propose a novel framework for object importance estimation using an interaction graph, in which the features of each object node are updated by interacting with others through graph convolution. Experiments show that our model …
Total citations
20202021202220232024111114
Scholar articles
Z Zhang, A Tawari, S Martin, D Crandall - 2020 IEEE International Conference on Robotics and …, 2020