Monitoring of Perception Systems: Deterministic, Probabilistic, and Learning-based Fault Detection and Identification

05/22/2022
by   Pasquale Antonante, et al.
0

This paper investigates runtime monitoring of perception systems. Perception is a critical component of high-integrity applications of robotics and autonomous systems, such as self-driving cars. In these applications, failure of perception systems may put human life at risk, and a broad adoption of these technologies requires the development of methodologies to guarantee and monitor safe operation. Despite the paramount importance of perception, currently there is no formal approach for system-level perception monitoring. In this paper, we formalize the problem of runtime fault detection and identification in perception systems and present a framework to model diagnostic information using a diagnostic graph. We then provide a set of deterministic, probabilistic, and learning-based algorithms that use diagnostic graphs to perform fault detection and identification. Moreover, we investigate fundamental limits and provide deterministic and probabilistic guarantees on the fault detection and identification results. We conclude the paper with an extensive experimental evaluation, which recreates several realistic failure modes in the LGSVL open-source autonomous driving simulator, and applies the proposed system monitors to a state-of-the-art autonomous driving software stack (Baidu's Apollo Auto). The results show that the proposed system monitors outperform baselines, have the potential of preventing accidents in realistic autonomous driving scenarios, and incur a negligible computational overhead.

READ FULL TEXT
research
05/24/2020

Monitoring and Diagnosability of Perception Systems

Perception is a critical component of high-integrity applications of rob...
research
10/05/2022

Deep Learning based Object Detection Model for Autonomous Driving Research using CARLA Simulator

Autonomous vehicle research has grown exponentially over the years with ...
research
10/26/2019

Deep Learning and Control Algorithms of Direct Perception for Autonomous Driving

Based on the direct perception paradigm of autonomous driving, we invest...
research
11/24/2021

Fault-Tolerant Perception for Automated Driving A Lightweight Monitoring Approach

While the most visible part of the safety verification process of automa...
research
03/22/2020

Guardauto: A Decentralized Runtime Protection System for Autonomous Driving

Due to the broad attack surface and the lack of runtime protection, pote...
research
09/28/2022

Towards Runtime Monitoring of Complex System Requirements for Autonomous Driving Functions

Autonomous driving functions (ADFs) in public traffic have to comply wit...
research
10/06/2022

A Distributed System-level Diagnosis Model for the Implementation of Unreliable Failure Detectors

Reliable systems require effective monitoring techniques for fault ident...

Please sign up or login with your details

Forgot password? Click here to reset