ReMAV: Reward Modeling of Autonomous Vehicles for Finding Likely Failure Events
Aizaz Sharif, Dusica Marijan

TL;DR
ReMAV is a black-box testing framework that analyzes autonomous vehicle behavior using offline data and reward modeling to identify likely failure events, improving safety testing efficiency.
Contribution
It introduces a novel reward modeling technique for behavior representation and a three-step methodology for failure event detection in autonomous vehicles.
Findings
Increased failure event detection rates in urban driving scenarios.
ReMAV outperforms baseline methods in identifying vehicle failures.
Significant rise in collision and off-road events during testing.
Abstract
Autonomous vehicles are advanced driving systems that are well known to be vulnerable to various adversarial attacks, compromising vehicle safety and posing a risk to other road users. Rather than actively training complex adversaries by interacting with the environment, there is a need to first intelligently find and reduce the search space to only those states where autonomous vehicles are found to be less confident. In this paper, we propose a black-box testing framework ReMAV that uses offline trajectories first to analyze the existing behavior of autonomous vehicles and determine appropriate thresholds to find the probability of failure events. To this end, we introduce a three-step methodology which i) uses offline state action pairs of any autonomous vehicle under test, ii) builds an abstract behavior representation using our designed reward modeling technique to analyze states…
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Taxonomy
TopicsForensic Toxicology and Drug Analysis · Adversarial Robustness in Machine Learning · Autonomous Vehicle Technology and Safety
