Perception simplex: Verifiable collision avoidance in autonomous vehicles amidst obstacle detection faults

Author:

Bansal Ayoosh1ORCID,Kim Hunmin2,Yu Simon1ORCID,Li Bo1,Hovakimyan Naira1,Caccamo Marco3,Sha Lui1

Affiliation:

1. University of Illinois Urbana‐Champaign Champaign Illinois USA

2. Mercer University Macon Georgia USA

3. Technical University of Munich Munich Germany

Abstract

AbstractAdvances in deep learning have revolutionized cyber‐physical applications, including the development of autonomous vehicles. However, real‐world collisions involving autonomous control of vehicles have raised significant safety concerns regarding the use of deep neural networks (DNNs) in safety‐critical tasks, particularly perception. The inherent unverifiability of DNNs poses a key challenge in ensuring their safe and reliable operation. In this work, we propose perception simplex ( ), a fault‐tolerant application architecture designed for obstacle detection and collision avoidance. We analyse an existing LiDAR‐based classical obstacle detection algorithm to establish strict bounds on its capabilities and limitations. Such analysis and verification have not been possible for deep learning‐based perception systems yet. By employing verifiable obstacle detection algorithms, identifies obstacle existence detection faults in the output of unverifiable DNN‐based object detectors. When faults with potential collision risks are detected, appropriate corrective actions are initiated. Through extensive analysis and software‐in‐the‐loop simulations, we demonstrate that provides deterministic fault tolerance against obstacle existence detection faults, establishing a robust safety guarantee.

Funder

National Aeronautics and Space Administration

University of Illinois at Urbana-Champaign

National Science Foundation

Air Force Office of Scientific Research

Publisher

Wiley

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