A Simple Approach to Constraint-Aware Imitation Learning with Application to Autonomous Racing
2025-03-10Code Available0· sign in to hype
Shengfan Cao, Eunhyek Joa, Francesco Borrelli
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- github.com/CadenzaCoda/ConstraintAwareILOfficialpytorch★ 5
Abstract
Guaranteeing constraint satisfaction is challenging in imitation learning (IL), particularly in tasks that require operating near a system's handling limits. Traditional IL methods often struggle to enforce constraints, leading to suboptimal performance in high-precision tasks. In this paper, we present a simple approach to incorporating safety into the IL objective. Through simulations, we empirically validate our approach on an autonomous racing task with both full-state and image feedback, demonstrating improved constraint satisfaction and greater consistency in task performance compared to a baseline method.