Certainty Equivalent Perception-Based Control
About
In order to certify performance and safety, feedback control requires precise characterization of sensor errors. In this paper, we provide guarantees on such feedback systems when sensors are characterized by solving a supervised learning problem. We show a uniform error bound on nonparametric kernel regression under a dynamically-achievable dense sampling scheme. This allows for a finite-time convergence rate on the sub-optimality of using the regressor in closed-loop for waypoint tracking. We demonstrate our results in simulation with simplified unmanned aerial vehicle and autonomous driving examples.
Sarah Dean, Benjamin Recht• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Safe perception-based control | Light Dark | Success Rate (SR)90.13 | 3 | |
| Safe perception-based control | 4D Car | Success Rate93.47 | 3 | |
| Safe perception-based control | Quadrotor | Success Rate100 | 3 | |
| Safe perception-based control | Humanoid | Success Rate (SR)100 | 3 |
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