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首页> 外文期刊>Intelligent Transportation Systems Magazine, IEEE >Clusters of Driving Behavior From Observational Smartphone Data
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Clusters of Driving Behavior From Observational Smartphone Data

机译:来自观察性智能手机数据的驾驶行为聚类

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摘要

Understanding driving behaviors is essential for improving safety and mobility of our transportation systems. Data is usually collected via simulator-based studies or naturalistic driving studies. Those techniques allow for understanding relations between demographics, road conditions and safety. On the other hand, they are very costly and time consuming. Thanks to the ubiquity of smartphones, we have an opportunity to substantially complement more traditional data collection techniques with data extracted from phone sensors, such as GPS, accelerometer gyroscope and camera. We developed statistical models that provided insight into driver behavior in the San Francisco metro area based on tens of thousands of driver logs. We used novel data sources to support our work. We used cell phone sensor data drawn from five hundred drivers in San Francisco to understand the speed of traffic across the city as well as the maneuvers of drivers in different areas. Specifically, we clustered drivers based on their driving behavior. We looked at driver norms by street and flagged driving behaviors that deviated from the norm.
机译:了解驾驶行为对于提高我们运输系统的安全性和机动性至关重要。通常通过基于模拟器的研究或自然驾驶研究来收集数据。这些技术允许理解人口统计,道路状况和安全性之间的关系。另一方面,它们非常昂贵且耗时。得益于智能手机的普及,我们有机会用从手机传感器(如GPS,加速度计陀螺仪和照相机)提取的数据来充分补充更传统的数据收集技术。我们开发了统计模型,该模型基于成千上万的驾驶员日志提供对旧金山市区的驾驶员行为的洞察力。我们使用了新颖的数据源来支持我们的工作。我们使用了从旧金山五百名驾驶员那里获得的手机传感器数据,以了解整个城市的交通速度以及不同地区的驾驶员的操作方式。具体来说,我们根据驾驶员的驾驶行为对其进行聚类。我们按街道查看了驾驶员规范,并标记了偏离规范的驾驶行为。

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