Importance is in your attention: agent importance prediction for autonomous driving
Christopher Hazard
A. Bhagat
Balarama Raju Buddharaju
Zhongtao Liu
Yunming Shao
Lu Lu
Sammy Omari
Henggang Cui

Abstract
Trajectory prediction is an important task in autonomous driving. State-of-the-art trajectory prediction models often use attention mechanisms to model the interaction between agents. In this paper, we show that the attention information from such models can also be used to measure the importance of each agent with respect to the ego vehicle's future planned trajectory. Our experiment results on the nuPlans dataset show that our method can effectively find and rank surrounding agents by their impact on the ego's plan.
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