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Scalable End-to-End Autonomous Vehicle Testing via Rare-event Simulation

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arxiv 1811.00145 v3 pith:UU55P77Q submitted 2018-10-31 cs.LG cs.ROstat.ML

Scalable End-to-End Autonomous Vehicle Testing via Rare-event Simulation

classification cs.LG cs.ROstat.ML
keywords testingautonomousevaluationframeworkmathsfmethodsprobabilityrare-event
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While recent developments in autonomous vehicle (AV) technology highlight substantial progress, we lack tools for rigorous and scalable testing. Real-world testing, the $\textit{de facto}$ 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 $10$-$300 \mathsf{P}$ times (where $\mathsf{P}$ is the number of processors) over real-world testing.

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