基于规则的基于GPS和陀螺仪数据的自然驾驶转弯曲线检测

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Omar Hassanin;Shahab Alizadeh;Brenda Vrkljan;Sayeh Bayat
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引用次数: 0

摘要

这封信提出了一个可解释的、基于规则的框架,用于使用从老年驾驶员收集的自然传感器数据来检测和分类常见的驾驶动作。该方法仅依赖于gps衍生的航向和陀螺仪的角速度,避免了速度和加速度等交通敏感变量。采用阈值化陀螺仪信号检测急剧机动和分析GPS航向单调趋势捕捉逐渐机动的两步方法。然后,利用航向变化、峰值角速度和空间范围等特征,将每个检测到的机动动作分为不同的类别——环路、90°转弯和曲线(紧/宽×光滑/急)。对超过500个标注事件的评估显示,分类准确率为98.6%,在大多数机动类型中都具有高性能。该框架具有传感器效率,对驾驶变异性具有鲁棒性,非常适合驾驶员行为监测和安全评估的实际应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rule-Based Detection of Turns and Curves in Naturalistic Driving Using GPS and Gyroscope Data
This letter presents an interpretable, rule-based framework for detecting and classifying common driving maneuvers using naturalistic sensor data collected from older adult drivers. The method relies solely on GPS-derived heading and gyroscope-based angular velocity, avoiding traffic-sensitive variables such as speed and acceleration. A two-step approach was implemented: thresholding gyroscope signals to detect sharp maneuvers and analyzing monotonic trends in GPS heading to capture gradual maneuvers. Each detected maneuver was then classified into distinct categories—loops, 90° turns, and curves (tight/wide × smooth/sharp)—using features such as heading change, peak angular velocity, and spatial extent. Evaluation on over 500 annotated events showed a classification accuracy of 98.6%, with high performance across most maneuver types. The framework is sensor-efficient, robust to driving variability, and well-suited for real-world applications in driver behavior monitoring and safety assessment.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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