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Clustering driving trip trajectory data based on pattern discovery techniques

机译:基于模式发现技术的行车轨迹数据聚类

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Identifying patterns to characterize driving human driving styles from driving trip data is a promising and interesting area of research and application. To cluster the driving trips in a set of recorded GPS tracks, this paper presents an information theoretic approach to characterize them based on their occurrences of frequently detected patterns. The patterns are discovered through a statistical significance test on a generated set of spatio-temporal data and its associated attributes that represent the characteristics of recorded GPS data. For evaluating the performance of the proposed approach, a real dataset with ground truth information is tested to validate its clustering power and compare with other approaches. The result indicates the approach is effective and efficient to extract interpretable features to summarize the complex driving behaviors to form a good representation of driving styles for machine learning to achieve good performance.
机译:从行驶数据中识别出表征驾驶人驾驶风格的模式是一个有前途且有趣的研究和应用领域。为了将行驶行程聚集在一组记录的GPS轨迹中,本文提出了一种信息理论方法,根据其频繁检测到的模式的出现来表征它们。通过对生成的一组时空数据及其关联的属性(表示记录的GPS数据的特征)进行统计显着性检验,可以发现这些模式。为了评估所提出方法的性能,测试了具有地面真实性信息的真实数据集,以验证其聚类能力并与其他方法进行比较。结果表明,该方法是有效且高效的方法,它可以提取可解释的特征以总结复杂的驾驶行为,从而很好地代表了驾驶方式,从而使机器学习能够获得良好的性能。

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