Application of Hidden Markov Model on Car Sensors for Detecting Drunk Drivers

Hasanin Harkous, Carine Bardawil, H. Artail, Naseem A. Daher
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引用次数: 5

Abstract

The ability to detect drunk driving behavior on roadways enhances road safety by significantly reducing the risk of fatal accidents. In this paper, a set of measurements, readily available via on-board vehicle sensors, was selected to detect drunk driving behaviors based on learning in accordance with certain drunk driving cues. A Hidden Markov Model (HMM) method was applied for each of the collected time series data, which correspond to the selected measurements. The prediction accuracy attained using each measured variable was derived and analyzed. The longitudinal acceleration achieved the best average prediction accuracy, for detecting both drunk and normal driving behaviors, with an accuracy that is equal to about 79%.
隐马尔可夫模型在醉酒驾驶汽车传感器中的应用
检测道路上酒后驾驶行为的能力通过显著降低致命事故的风险来提高道路安全。本文选择一组可通过车载传感器获得的测量值,根据特定的醉酒驾驶线索,基于学习来检测醉酒驾驶行为。采用隐马尔可夫模型(HMM)方法对每一个收集到的时间序列数据进行处理,这些数据与选定的测量值相对应。对各测量变量的预测精度进行了推导和分析。纵向加速度在检测醉酒驾驶和正常驾驶行为方面均达到了最佳的平均预测精度,准确率约为79%。
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