Scalable end-to-end autonomous vehicle testing via rare-event simulation

© 2018 Curran Associates Inc.All rights reserved. While recent developments in autonomous vehicle (AV) technology highlight substantial progress, we lack tools for rigorous and scalable testing. Real-world testing, the de facto evaluation environment, places the public in danger, and, due to the rar...

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Detalhes bibliográficos
Main Authors: O'Kelly, M, Duchi, J, Sinha, A, Namkoong, H, Tedrake, R
Outros Autores: Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science
Formato: Artigo
Idioma:English
Publicado em: 2022
Acesso em linha:https://hdl.handle.net/1721.1/143975
Descrição
Resumo:© 2018 Curran Associates Inc.All rights reserved. While recent developments in autonomous vehicle (AV) technology highlight substantial progress, we lack tools for rigorous and scalable testing. Real-world testing, the de facto evaluation environment, places the public in danger, and, due to the rare nature of accidents, will require billions of miles in order to statistically validate performance claims. We implement a simulation framework that can test an entire modern autonomous driving system, including, in particular, systems that employ deep-learning perception and control algorithms. Using adaptive importance-sampling methods to accelerate rare-event probability evaluation, we estimate the probability of an accident under a base distribution governing standard traffic behavior. We demonstrate our framework on a highway scenario, accelerating system evaluation by 2-20 times over naive Monte Carlo sampling methods and 10-300P times (where P is the number of processors) over real-world testing.