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Control Barrier Functions: Theory and Applications
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This paper provides an introduction and overview of recent work on control barrier functions and their use to verify and enforce safety properties in the context of (optimization based) safety-critical controllers. We survey the main technical results and discuss applications to several domains including robotic systems.
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Cited by 4 Pith papers
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AssistDLO combines multi-view state estimation, visual assistance, and a geometry-aware shared-autonomy controller using control barrier functions for DLO teleoperation, with a user study showing that benefits depend ...
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