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Reasoning Multi-Agent Behavioral Topology for Interactive Autonomous Driving

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Autonomous driving system aims for safe and social-consistent driving through the behavioral integration among interactive agents. However, challenges remain due to multi-agent scene uncertainty and heterogeneous interaction. Current dense and sparse behavioral representations struggle with inefficiency and inconsistency in multi-agent modeling, leading to instability of collective behavioral patterns when integrating prediction and planning (IPP). To address this, we initiate a topological formation that serves as a compliant behavioral foreground to guide downstream trajectory generations. Specifically, we introduce Behavioral Topology (BeTop), a pivotal topological formulation that explicitly represents the consensual behavioral pattern among multi-agent future. BeTop is derived from braid theory to distill compliant interactive topology from multi-agent future trajectories. A synergistic learning framework (BeTopNet) supervised by BeTop facilitates the consistency of behavior prediction and planning within the predicted topology priors. Through imitative contingency learning, BeTop also effectively manages behavioral uncertainty for prediction and planning. Extensive verification on large-scale real-world datasets, including nuPlan and WOMD, demonstrates that BeTop achieves state-of-the-art performance in both prediction and planning tasks. Further validations on the proposed interactive scenario benchmark showcase planning compliance in interactive cases.

Haochen Liu, Li Chen, Yu Qiao, Chen Lv, Hongyang Li• 2024

Related benchmarks

TaskDatasetResultRank
PlanningnuPlan 14 Random (test)
CLS-NR0.902
40
Joint predictionWaymo Open Motion Dataset (WOMD) Interaction (test)
minADE0.7862
26
PlanningnuPlan 14 Hard (test)
CLS-NR77.1
23
Motion PredictionWaymo Open Dataset leaderboard (test)
mAP45.87
13
Marginal Motion PredictionWaymo Open Motion Dataset (WOMD) Motion Leaderboard v1.1 (test)
minADE0.3451
12
Closed-loop PlanningnuPlan (val14)
CA96.6
11
Marginal Motion PredictionWaymo Open Motion Dataset (WOMD) (val)
minADE0.5716
11
Marginal Motion PredictionWaymo Open Motion Dataset (WOMD) (test)
minADE0.5723
8
Closed-loop PlanningnuPlan Test14-Inter
Collision Avoidance98.3
7
Joint predictionWaymo Open Motion Dataset (WOMD) Interaction (val)
minADE0.9304
3
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