车辆自我监视:传感器支持的自动驾驶员识别

Ian D. Markwood, Yao Liu
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引用次数: 9

摘要

机动车辆被广泛使用,价值很高,而且经常成为盗窃的目标。预防措施包括汽车警报、接近控制和物理锁,如果汽车没有上锁,或者小偷拿到了钥匙,这些锁就可以被绕过。诸如摄像头、运动探测器、人工巡逻和GPS跟踪等反应性策略可以监控车辆,但可能无法及时发现汽车盗窃。我们提出了一种快速的自动驾驶员识别系统,该系统可以识别未经授权的驾驶员,同时克服了以往方法的缺点。我们将司机的旅行纳入基本驾驶事件,从中提取他们的驾驶偏好特征,这些特征不能被小偷驾驶偷来的车完全复制。我们使用从31名志愿者那里收集的驾驶数据进行了真实世界的评估。实验结果表明,识别当前驾驶员为车主的准确率为97%,防止冒充的准确率为91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle Self-Surveillance: Sensor-Enabled Automatic Driver Recognition
Motor vehicles are widely used, quite valuable, and often targeted for theft. Preventive measures include car alarms, proximity control, and physical locks, which can be bypassed if the car is left unlocked, or if the thief obtains the keys. Reactive strategies like cameras, motion detectors, human patrolling, and GPS tracking can monitor a vehicle, but may not detect car thefts in a timely manner. We propose a fast automatic driver recognition system that identifies unauthorized drivers while overcoming the drawbacks of previous approaches. We factor drivers' trips into elemental driving events, from which we extract their driving preference features that cannot be exactly reproduced by a thief driving away in the stolen car. We performed real world evaluation using the driving data collected from 31 volunteers. Experiment results show we can distinguish the current driver as the owner with 97% accuracy, while preventing impersonation 91% of the time.
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