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Autori principali: Čávojský, Matúš, Šlapak, Eugen, Dopiriak, Matúš, Bugár, Gabriel, Gazda, Juraj
Natura: Preprint
Pubblicazione: 2024
Soggetti:
Accesso online:https://arxiv.org/abs/2409.10524
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author Čávojský, Matúš
Šlapak, Eugen
Dopiriak, Matúš
Bugár, Gabriel
Gazda, Juraj
author_facet Čávojský, Matúš
Šlapak, Eugen
Dopiriak, Matúš
Bugár, Gabriel
Gazda, Juraj
contents We present the CARLA corner case simulation (3CSim) for evaluating autonomous driving (AD) systems within the CARLA simulator. This framework is designed to address the limitations of traditional AD model training by focusing on non-standard, rare, and cognitively challenging scenarios. These corner cases are crucial for ensuring vehicle safety and reliability, as they test advanced control capabilities under unusual conditions. Our approach introduces a taxonomy of corner cases categorized into state anomalies, behavior anomalies, and evidence-based anomalies. We implement 32 unique corner cases with adjustable parameters, including 9 predefined weather conditions, timing, and traffic density. The framework enables repeatable and modifiable scenario evaluations, facilitating the creation of a comprehensive dataset for further analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2409_10524
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle 3CSim: CARLA Corner Case Simulation for Control Assessment in Autonomous Driving
Čávojský, Matúš
Šlapak, Eugen
Dopiriak, Matúš
Bugár, Gabriel
Gazda, Juraj
Robotics
Artificial Intelligence
We present the CARLA corner case simulation (3CSim) for evaluating autonomous driving (AD) systems within the CARLA simulator. This framework is designed to address the limitations of traditional AD model training by focusing on non-standard, rare, and cognitively challenging scenarios. These corner cases are crucial for ensuring vehicle safety and reliability, as they test advanced control capabilities under unusual conditions. Our approach introduces a taxonomy of corner cases categorized into state anomalies, behavior anomalies, and evidence-based anomalies. We implement 32 unique corner cases with adjustable parameters, including 9 predefined weather conditions, timing, and traffic density. The framework enables repeatable and modifiable scenario evaluations, facilitating the creation of a comprehensive dataset for further analysis.
title 3CSim: CARLA Corner Case Simulation for Control Assessment in Autonomous Driving
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2409.10524