基于驾驶员注视和车辆操作行为的变道风险综合建模

Masataka Mori, C. Miyajima, Takatsugu Hirayama, N. Kitaoka, K. Takeda
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引用次数: 15

摘要

本文研究了一种基于驾驶员注视和车辆操作行为集成建模的危险变道检测方法。驾驶员注视方向和车辆操作行为被分解为离散行为,如看后视镜、刹车等,并使用多流隐马尔可夫模型(hmm)对这些动作序列进行联合建模。在高速公路上,驾驶数据被记录在驾驶员超过前车时,即驾驶员进行两次变道,第一次超过前车,然后回到原来的车道。由于实际驾驶风险水平难以衡量,因此每次变道的风险水平由受试者评定,我们假设他们的得分代表“基本真实”风险水平。通过对注视和车辆操作行为的联合建模,提高了危险变道检测的性能。为了更准确地评估整体风险,我们使用了多个变道事件的数据。通过累积14分钟的HMM可能性,我们获得HMM可能性得分与主观风险评估得分之间的平均相关系数为0.80。通过累积前20分钟的这些指标,危险驾驶检出率达到96.0%,假阳性率为7.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated modeling of driver gaze and vehicle operation behavior to estimate risk level during lane changes
In this paper, we investigate a method for detecting risky lane changes using integrated modeling of driver gaze and vehicle operation behavior. Driver gaze direction and vehicle operation behavior are broken down into discrete acts, e.g., looking in the rear view mirror, braking, etc., and sequences of these actions are jointly modeled using multi-stream hidden Markov models (HMMs). Driving data is recorded on expressways as drivers pass leading vehicles, i.e., the drivers make two lane changes, first to pass leading vehicles and then to move back into their original lanes. Since actual driving risk levels are difficult to measure, the risk level of each lane change is rated by subjects, and we assume their scores represent the “ground-truth” risk level. By jointly modeling gaze and vehicle operation behavior, we improve the performance of risky lane change detection. To more accurately evaluate overall risk, we use data from multiple lane change events. We obtain an average correlation coefficient of 0.80 between HMM likelihood scores and subjective risk evaluation scores by accumulating HMM likelihoods for a period of fourteen minutes. By accumulating these indicators for the previous twenty minutes, a 96.0% risky driving detection rate is achieved with a 7.1% false positive rate.
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