Lane change maneuver recognition via vehicle state and driver operation signals — Results from naturalistic driving data

Guofa Li, S. Li, Yuan Liao, Wenjun Wang, B. Cheng, Fang Chen
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引用次数: 42

Abstract

Lane change maneuver recognition is critical in driver characteristics analysis and driver behavior modeling for active safety systems. This paper presents an enhanced classification method to recognize lane change maneuver by using optimized features exclusively extracted from vehicle state and driver operation signals. The sequential forward floating selection (SFFS) algorithm was adopted to select the optimized feature set to maximize the k-nearest-neighbor classifier performance. The hidden Markov models (HMMs), based on the optimized feature set, were developed to classify driver lane change and lane keeping maneuvers. Fifteen drivers participated in the road test for validation with an accumulation of 2,200 km naturalistic driving data, from which 372 lane changes were extracted. Results show that the recognition rate of lane change maneuver achieves 88.2%. The numbers are 87.6% and 88.8% for left and right lane change maneuvers, respectively, superior to the results from conventional classifiers.
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通过车辆状态和驾驶员操作信号来识别变道机动-来自自然驾驶数据的结果
变道机动识别是主动安全系统驾驶员特征分析和驾驶员行为建模的关键。本文提出了一种改进的变道机动分类方法,该方法利用从车辆状态和驾驶员操作信号中单独提取的优化特征识别变道机动。采用顺序正向浮动选择(SFFS)算法选择优化后的特征集,使k-近邻分类器性能最大化。基于优化后的特征集,建立了隐马尔可夫模型,对驾驶员变道和保持车道进行分类。15名驾驶员参加了道路测试,积累了2200公里的自然驾驶数据,从中提取了372条车道变化。结果表明,该系统对变道机动的识别率达到了88.2%。左变道机动和右变道机动的数据分别为87.6%和88.8%,优于传统分类器的结果。
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