TL;DR
This paper introduces an open-source, situation coverage-based testing framework for autonomous vehicles in CARLA, focusing on intersection scenarios to improve safety verification and reveal algorithm weaknesses.
Contribution
It presents a novel situation coverage approach for AV testing, including an intersection ontology and hyperspace, with open-source implementation for enhanced V&V.
Findings
Situation coverage-based testing detects more edge-case faults.
Both random and coverage-based methods trigger similar fault counts.
The framework provides detailed insights into AV algorithm weaknesses.
Abstract
Autonomous Vehicles (AVs) i.e., self-driving cars, operate in a safety critical domain, since errors in the autonomous driving software can lead to huge losses. Statistically, road intersections which are a part of the AVs operational design domain (ODD), have some of the highest accident rates. Hence, testing AVs to the limits on road intersections and assuring their safety on road intersections is pertinent, and thus the focus of this paper. We present a situation coverage-based (SitCov) AV-testing framework for the verification and validation (V&V) and safety assurance of AVs, developed in an open-source AV simulator named CARLA. The SitCov AV-testing framework focuses on vehicle-to-vehicle interaction on a road intersection under different environmental and intersection configuration situations, using situation coverage criteria for automatic test suite generation for safety…
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Taxonomy
MethodsEntropy Regularization · Proximal Policy Optimization · CARLA: An Open Urban Driving Simulator
