Lab2Car: A Versatile Wrapper for Deploying Experimental Planners in Complex Real-world Environments
Human-level autonomous driving is an ever-elusive goal, with planning and decision making -- the cognitive functions that determine driving behavior -- posing the greatest challenge. Despite a proliferation of promising approaches, progress is stifled by the difficulty of deploying experimental plan...
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Zusammenfassung: | Human-level autonomous driving is an ever-elusive goal, with planning and
decision making -- the cognitive functions that determine driving behavior --
posing the greatest challenge. Despite a proliferation of promising approaches,
progress is stifled by the difficulty of deploying experimental planners in
naturalistic settings. In this work, we propose Lab2Car, an optimization-based
wrapper that can take a trajectory sketch from an arbitrary motion planner and
convert it to a safe, comfortable, dynamically feasible trajectory that the car
can follow. This allows motion planners that do not provide such guarantees to
be safely tested and optimized in real-world environments. We demonstrate the
versatility of Lab2Car by using it to deploy a machine learning (ML) planner
and a search-based planner on self-driving cars in Las Vegas. The resulting
systems handle challenging scenarios, such as cut-ins, overtaking, and
yielding, in complex urban environments like casino pick-up/drop-off areas. Our
work paves the way for quickly deploying and evaluating candidate motion
planners in realistic settings, ensuring rapid iteration and accelerating
progress towards human-level autonomy. |
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DOI: | 10.48550/arxiv.2409.09523 |