Multimodal Belief-Space Covariance Steering with Active Probing and Influence for Interactive Driving
Devodita Chakravarty, John Dolan, Yiwei Lyu

TL;DR
This paper presents a hierarchical belief model and active probing strategy for autonomous driving that jointly reason about human behavior, influence it safely, and improve decision-making under uncertainty in complex traffic scenarios.
Contribution
It introduces a novel hierarchical belief model combined with active probing and risk evaluation for safer, more effective interactive driving in uncertain environments.
Findings
Higher success rates in lane-merging and intersection scenarios
Shorter completion times compared to existing methods
Effective coupling of belief inference, probing, and risk monitoring
Abstract
Autonomous driving in complex traffic requires reasoning under uncertainty. Common approaches rely on prediction-based planning or risk-aware control, but these are typically treated in isolation, limiting their ability to capture the coupled nature of action and inference in interactive settings. This gap becomes especially critical in uncertain scenarios, where simply reacting to predictions can lead to unsafe maneuvers or overly conservative behavior. Our central insight is that safe interaction requires not only estimating human behavior but also shaping it when ambiguity poses risks. To this end, we introduce a hierarchical belief model that structures human behavior across coarse discrete intents and fine motion modes, updated via Bayesian inference for interpretable multi-resolution reasoning. On top of this, we develop an active probing strategy that identifies when multimodal…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning · Robotic Path Planning Algorithms
