基于直方图的GPS轨迹聚类特征提取

C. Nguyen, T. Dinh, Van-Hau Nguyen, N. Tran, Anh Le
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引用次数: 0

摘要

从GPS数据中聚类轨迹是开发智能交通系统应用的关键任务。大多数现有的方法对原始数据进行聚类,这些数据由一系列移动物体的GPS位置组成。这种方法不适合对车辆的移动行为进行分类,例如,如何区分出租车的轨迹和私家车的轨迹。本文主要研究具有相同运动行为的车辆的聚类轨迹问题。我们的方法基于基于直方图的特征提取来模拟物体的运动行为,并利用传统的聚类算法来对轨迹进行分组。我们在真实数据集上进行了实验,得到了比现有方法更好的结果。
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Histogram-based Feature Extraction for GPS Trajectory Clustering
Clustering trajectories from GPS data is a crucial task for developing applications in intelligent transportation systems. Most existing approaches perform clustering on raw data consisting of series of GPS positions of moving objects over time. Such approaches are not suitable for classifying moving behaviours of vehicles, e.g., how to distinguish between a trajectory of a taxi and a trajectory of a private car. In this paper, we focus on the problem of clustering trajectories of vehicles having the same moving behaviours. Our approach is based on histogram-based feature extraction to model moving behaviours of objects and utilizes traditional clustering algorithms to group trajectories. We perform experiments on real datasets and obtain better results than existing approaches.
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CiteScore
4.00
自引率
0.00%
发文量
15
审稿时长
10 weeks
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