Acceleration method for generating perception failure scenarios based on editing Markov process
Canjie Cai

TL;DR
This paper introduces an accelerated method for generating perception failure scenarios in underground parking garages, using an edited Markov process to improve autonomous vehicle perception testing and safety.
Contribution
It presents a novel approach that edits the Markov process to efficiently generate high-density perception failure scenarios specific to underground parking environments.
Findings
Generated high-density perception failure scenarios effectively.
Enhanced perception algorithm safety performance in simulations.
Validated method using Carla and Vissim platforms.
Abstract
With the rapid advancement of autonomous driving technology, self-driving cars have become a central focus in the development of future transportation systems. Scenario generation technology has emerged as a crucial tool for testing and verifying the safety performance of autonomous driving systems. Current research in scenario generation primarily focuses on open roads such as highways, with relatively limited studies on underground parking garages. The unique structural constraints, insufficient lighting, and high-density obstacles in underground parking garages impose greater demands on the perception systems, which are critical to autonomous driving technology. This study proposes an accelerated generation method for perception failure scenarios tailored to the underground parking garage environment, aimed at testing and improving the safety performance of autonomous vehicle (AV)…
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Taxonomy
TopicsRisk and Safety Analysis · Industrial Vision Systems and Defect Detection · Software Engineering Research
MethodsFocus · Entropy Regularization · Proximal Policy Optimization · CARLA: An Open Urban Driving Simulator
