从警方报告中自动重建车祸,用于测试自动驾驶汽车

Alessio Gambi, Tri Huynh, G. Fraser
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引用次数: 9

摘要

自动驾驶有望大幅减少车祸的数量;然而,最近报道的涉及自动驾驶汽车的致命事故表明,这一重要目标尚未实现,并呼吁对控制自动驾驶汽车的软件进行更好的测试。为了更好地测试自动驾驶汽车软件,我们建议专门测试关键场景。由于这些很难在现场操作中进行测试,因此我们创建了关键情况的模拟。这些模拟是自动从自然语言警察的实际车祸报告中得出的,这些报告可以在历史数据集中找到。我们的初步评估表明,我们可以在几分钟内生成准确的模拟。
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Automatically Reconstructing Car Crashes from Police Reports for Testing Self-Driving Cars
Autonomous driving carries the promise to drastically reduce the number of car accidents; however, recently reported fatal crashes involving self-driving cars show this important goal is not yet achieved, and call for better testing of the software controlling self-driving cars. To better test self-driving car software, we propose to specifically test critical scenarios. Since these are difficult to test in field operation, we create simulations of critical situations. These simulations are automatically derived from natural language police reports of actual car crashes, which are available in historical datasets. Our initial evaluation shows that we can generate accurate simulations in a matter of minutes.
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