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Published November 9, 2020 | Submitted
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Guaranteeing Safety of Learned Perception Modules via Measurement-Robust Control Barrier Functions

Abstract

Modern nonlinear control theory seeks to develop feedback controllers that endow systems with properties such as safety and stability. The guarantees ensured by these controllers often rely on accurate estimates of the system state for determining control actions. In practice, measurement model uncertainty can lead to error in state estimates that degrades these guarantees. In this paper, we seek to unify techniques from control theory and machine learning to synthesize controllers that achieve safety in the presence of measurement model uncertainty. We define the notion of a Measurement-Robust Control Barrier Function (MR-CBF) as a tool for determining safe control inputs when facing measurement model uncertainty. Furthermore, MR-CBFs are used to inform sampling methodologies for learning-based perception systems and quantify tolerable error in the resulting learned models. We demonstrate the efficacy of MR-CBFs in achieving safety with measurement model uncertainty on a simulated Segway system.

Additional Information

We thank the anonymous reviewers for helpful feedback, and Andrew Singletary for his work developing the Segway simulation environment. This research is generously supported in part by ONR awards N00014-20-1-2497 and N00014-18-1-2833, NSF CPS award 1931853, and the DARPA Assured Autonomy program (FA8750-18-C-0101), and a gift from Twitter. SD is supported by an NSF Graduate Research Fellowship under Grant No. DGE 1752814. AT is supported by DARPA award HR00111890035.

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August 20, 2023
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October 20, 2023