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Incorporating System-level Safety Requirements in Perception Models via Reinforcement Learning

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arxiv 2412.02951 v1 pith:3LJRDBQP submitted 2024-12-04 cs.RO cs.LG

Incorporating System-level Safety Requirements in Perception Models via Reinforcement Learning

classification cs.RO cs.LG
keywords safetysystem-levelperceptionmodelsapproachcomponentserrorslearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Perception components in autonomous systems are often developed and optimized independently of downstream decision-making and control components, relying on established performance metrics like accuracy, precision, and recall. Traditional loss functions, such as cross-entropy loss and negative log-likelihood, focus on reducing misclassification errors but fail to consider their impact on system-level safety, overlooking the varying severities of system-level failures caused by these errors. To address this limitation, we propose a novel training paradigm that augments the perception component with an understanding of system-level safety objectives. Central to our approach is the translation of system-level safety requirements, formally specified using the rulebook formalism, into safety scores. These scores are then incorporated into the reward function of a reinforcement learning framework for fine-tuning perception models with system-level safety objectives. Simulation results demonstrate that models trained with this approach outperform baseline perception models in terms of system-level safety.

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