SafeBench: A Benchmarking Platform for Safety Evaluation of Autonomous Vehicles
As shown by recent studies, machine intelligence-enabled systems are vulnerable to test cases resulting from either adversarial manipulation or natural distribution shifts. This has raised great concerns about deploying machine learning algorithms for real-world applications, especially in safety-cr...
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Zusammenfassung: | As shown by recent studies, machine intelligence-enabled systems are
vulnerable to test cases resulting from either adversarial manipulation or
natural distribution shifts. This has raised great concerns about deploying
machine learning algorithms for real-world applications, especially in
safety-critical domains such as autonomous driving (AD). On the other hand,
traditional AD testing on naturalistic scenarios requires hundreds of millions
of driving miles due to the high dimensionality and rareness of the
safety-critical scenarios in the real world. As a result, several approaches
for autonomous driving evaluation have been explored, which are usually,
however, based on different simulation platforms, types of safety-critical
scenarios, scenario generation algorithms, and driving route variations. Thus,
despite a large amount of effort in autonomous driving testing, it is still
challenging to compare and understand the effectiveness and efficiency of
different testing scenario generation algorithms and testing mechanisms under
similar conditions. In this paper, we aim to provide the first unified platform
SafeBench to integrate different types of safety-critical testing scenarios,
scenario generation algorithms, and other variations such as driving routes and
environments. Meanwhile, we implement 4 deep reinforcement learning-based AD
algorithms with 4 types of input (e.g., bird's-eye view, camera) to perform
fair comparisons on SafeBench. We find our generated testing scenarios are
indeed more challenging and observe the trade-off between the performance of AD
agents under benign and safety-critical testing scenarios. We believe our
unified platform SafeBench for large-scale and effective autonomous driving
testing will motivate the development of new testing scenario generation and
safe AD algorithms. SafeBench is available at https://safebench.github.io. |
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DOI: | 10.48550/arxiv.2206.09682 |