Safe Output Feedback Motion Planning from Images via Learned Perception Modules and Contraction Theory

06/14/2022
by   Glen Chou, et al.
0

We present a motion planning algorithm for a class of uncertain control-affine nonlinear systems which guarantees runtime safety and goal reachability when using high-dimensional sensor measurements (e.g., RGB-D images) and a learned perception module in the feedback control loop. First, given a dataset of states and observations, we train a perception system that seeks to invert a subset of the state from an observation, and estimate an upper bound on the perception error which is valid with high probability in a trusted domain near the data. Next, we use contraction theory to design a stabilizing state feedback controller and a convergent dynamic state observer which uses the learned perception system to update its state estimate. We derive a bound on the trajectory tracking error when this controller is subjected to errors in the dynamics and incorrect state estimates. Finally, we integrate this bound into a sampling-based motion planner, guiding it to return trajectories that can be safely tracked at runtime using sensor data. We demonstrate our approach in simulation on a 4D car, a 6D planar quadrotor, and a 17D manipulation task with RGB(-D) sensor measurements, demonstrating that our method safely and reliably steers the system to the goal, while baselines that fail to consider the trusted domain or state estimation errors can be unsafe.

READ FULL TEXT

page 1

page 15

research
04/18/2021

Model Error Propagation via Learned Contraction Metrics for Safe Feedback Motion Planning of Unknown Systems

We present a method for contraction-based feedback motion planning of lo...
research
12/13/2022

Statistical Safety and Robustness Guarantees for Feedback Motion Planning of Unknown Underactuated Stochastic Systems

We present a method for providing statistical guarantees on runtime safe...
research
04/01/2023

Safe Perception-Based Control under Stochastic Sensor Uncertainty using Conformal Prediction

We consider perception-based control using state estimates that are obta...
research
07/08/2019

Robust Guarantees for Perception-Based Control

Motivated by vision based control of autonomous vehicles, we consider th...
research
05/13/2021

Uncertainty-aware Safe Exploratory Planning using Gaussian Process and Neural Control Contraction Metric

In this paper, we consider the problem of using a robot to explore an en...
research
10/18/2020

Planning with Learned Dynamics: Guaranteed Safety and Reachability via Lipschitz Constants

We present an approach for feedback motion planning of systems with unkn...
research
09/17/2021

Robust Control Under Uncertainty via Bounded Rationality and Differential Privacy

The rapid development of affordable and compact high-fidelity sensors (e...

Please sign up or login with your details

Forgot password? Click here to reset