基于LightGBM分类器的GPS轨迹数据运输模式检测

Bijun Wang, Yulong Wang, K. Qin, Qizhi Xia
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引用次数: 23

摘要

GPS设备生成的轨迹数据可以获取人类的出行行为,反映不同的交通方式,为轨迹预测、城市规划和交通监控提供有用的信息。本文提出了基于光梯度增强机(Light Gradient Boosting Machine, LightGBM)的交通方式分类方法,从GPS轨迹数据中发现步行、骑自行车、乘公交车、乘出租车、开车、乘地铁和乘火车七种交通方式。首先,必须将原始轨迹划分为若干子轨迹。每个子轨迹中只有一个运输方式标签。其次,计算子弹道特征向量,包括8个基本特征和3个高级特征;这些基本特征是距离特征,五个与速度相关的特征和两个与加速度相关的特征。三个高级特征是航向变化率(hcr),停止率(sr)和速度变化率(vcr),最后,使用LightGBM分类器自动检测运输方式。最后利用极限梯度增强(XGBoost)和决策树验证了该方法的有效性。实验数据由微软亚洲研究院提供。结果表明,LightGBM和XGBoost方法对汽车、地铁和火车的分类精度高于决策树方法,且LightGBM方法优于XGBoost方法。
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Detecting Transportation Modes Based on LightGBM Classifier from GPS Trajectory Data
Human travel behavior can be obtained from the trajectory data generated by GPS devices, which can be reflected in different transportation modes and provide useful information for trajectory prediction, urban planning and traffic monitoring. In this article, we proposed transportation modes classification method based on Light Gradient Boosting Machine (LightGBM) to discover seven kinds of transportation modes from GPS trajectory data, including walking, cycling, taking a bus, taking a taxi, driving a car, taking the subway and taking a train. First, the original trajectories must be divided into some sub trajectories. There is only one transportation mode label in each sub trajectory. Second, the feature vector of sub trajectory is computed including eight basic and three advanced features. These basic features are distance feature, five velocity-related features and two acceleration-related features. Three advanced features are heading change rate (hcr), stop rate (sr) and velocity change rate (vcr), Final, the LightGBM classifier is used to detect the transportation modes automatically. The eXtreme Gradient Boosting (XGBoost) and decision tree are also used to verify the efficiency of our method. The experiment data are Geolife provided by Microsoft Research Asia. The results show that the LightGBM and XGBoost methods are more accurate than decision tree method and the LightGBM is better than XGBoost at the classification of car, subway and train.
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