ProspectNet: Weighted Conditional Attention for Future Interaction
Modeling in Behavior Prediction
- URL: http://arxiv.org/abs/2208.13848v1
- Date: Mon, 29 Aug 2022 19:29:49 GMT
- Title: ProspectNet: Weighted Conditional Attention for Future Interaction
Modeling in Behavior Prediction
- Authors: Yutian Pang, Zehua Guo, Binnan Zhuang
- Abstract summary: We formulate the end-to-end joint prediction problem as a sequential learning process of marginal learning and joint learning of vehicle behaviors.
We propose ProspectNet, a joint learning block that adopts the weighted attention score to model the mutual influence between interactive agent pairs.
We show that ProspectNet outperforms the Cartesian product of two marginal predictions, and achieves comparable performance on the Interactive Motion Prediction benchmarks.
- Score: 5.520507323174275
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Behavior prediction plays an important role in integrated autonomous driving
software solutions. In behavior prediction research, interactive behavior
prediction is a less-explored area, compared to single-agent behavior
prediction. Predicting the motion of interactive agents requires initiating
novel mechanisms to capture the joint behaviors of the interactive pairs. In
this work, we formulate the end-to-end joint prediction problem as a sequential
learning process of marginal learning and joint learning of vehicle behaviors.
We propose ProspectNet, a joint learning block that adopts the weighted
attention score to model the mutual influence between interactive agent pairs.
The joint learning block first weighs the multi-modal predicted candidate
trajectories, then updates the ego-agent's embedding via cross attention.
Furthermore, we broadcast the individual future predictions for each
interactive agent into a pair-wise scoring module to select the top $K$
prediction pairs. We show that ProspectNet outperforms the Cartesian product of
two marginal predictions, and achieves comparable performance on the Waymo
Interactive Motion Prediction benchmarks.
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