Would you like to see your presentation here, made available to a global audience of researchers?
Add your own presentation or have us affordably record your next conference.
Prediction of pedestrian behavior is crucial for autonomous driving systems and intelligent transportation.Conventional methods predict the behavior based solely on either the pedestrian intention or the distance-related interactions between the pedestrian and its surroundings. However, these methods overlook the associations between intention and interaction for behavior prediction, in which they should be aligned with each other, thus leading to sub-optimal predictions. To solve this problem, we propose to predict the behavior by learning the association between intention and interaction, enabling them to mutually enhance each other during the prediction. Specifically, we first predict the short-term intention of all objects, including the target pedestrian and its surroundings.Then, instead of using the distance-related interactions, we predict the interactions by learning the correlated intentions. Finally, the intention-driven interactions refine the initial intention prediction, thus ensuring the alignment between intention and interaction for behavior prediction. We evaluate our method on two downstream tasks, the pedestrian trajectory prediction and pedestrian intention estimation, and show that it outperforms all the existing methods.
