Provably safe robot navigation with obstacle uncertainty

Author:

Axelrod Brian1ORCID,Kaelbling Leslie Pack2,Lozano-Pérez Tomás2

Affiliation:

1. Stanford University, Stanford, CA, USA

2. Massachusetts Institute of Technology, Cambridge, MA, USA

Abstract

As drones and autonomous cars become more widespread, it is becoming increasingly important that robots can operate safely under realistic conditions. The noisy information fed into real systems means that robots must use estimates of the environment to plan navigation. Efficiently guaranteeing that the resulting motion plans are safe under these circumstances has proved difficult. We examine how to guarantee that a trajectory or policy has at most [Formula: see text] collision probability ([Formula: see text]-safe) with only imperfect observations of the environment. We examine the implications of various mathematical formalisms of safety and arrive at a mathematical notion of safety of a long-term execution, even when conditioned on observational information. We explore the idea of shadows that generalize the notion of a confidence set to estimated shapes and present a theorem that allows us to understand the relationship between shadows and their classical statistical equivalents such as confidence and credible sets. We present efficient algorithms that use shadows to prove that trajectories or policies are safe with much tighter bounds than in previous work. Notably, the complexity of the environment does not affect our method’s ability to evaluate whether a trajectory or policy is safe. We then use these safety-checking methods to design a safe variant of the rapidly exploring random tree (RRT) planning algorithm.

Funder

Office of Naval Research

Army Research Office

National Science Foundation

Air Force Office of Scientific Research

Thomas and Stacey Siebel Foundation

Publisher

SAGE Publications

Subject

Applied Mathematics,Artificial Intelligence,Electrical and Electronic Engineering,Mechanical Engineering,Modelling and Simulation,Software

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