A concise summary of spatial anomalies and its application in efficient real-time driving behaviour monitoring

Hoang Thanh Lam
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引用次数: 5

Abstract

This work is motivated by a smart car application which analyses streams of data generated from cars to enhance transportation safety. We treated the problem as real-time abnormal driving behaviour detection using spatio-temporal data collected from mobile devices including GPS location, speed and steering angle. A concise summary was proposed to summarise spatial patterns from GPS trajectory data for efficient real-time anomaly detection. An approach solving this problem by nearest neighbour search has O(n) space and O(log(n) + k) query time complexity, where k is the neighbourhood size and n is the data size. On the other hand, the concise summary approach requires only O(ε * n) memory space and has O(log(ε * n)) query time complexity, where k is several orders of magnitude smaller than one. Experiments with two large datasets from Porto and Beijing showed that our method used only a few megabytes to summarise datasets with n = 80 million data points and was able to process 30K queries per second which was several orders of magnitude faster than the baseline approach. Besides, in the work, interesting spatio-temporal patterns regarding abnormal driving behaviours from the real-world datasets are also discussed to demonstrate potential application of the work in many industries including insurance, transportation safety enhancement and city transport management.
空间异常及其在高效实时驾驶行为监测中的应用综述
这项工作的动机是一款智能汽车应用程序,它可以分析汽车产生的数据流,以提高交通安全。我们将该问题视为实时异常驾驶行为检测,使用从移动设备收集的时空数据,包括GPS位置、速度和转向角度。提出了一种基于GPS轨迹数据的空间模式总结方法,用于实时有效的异常检测。通过最近邻搜索解决该问题的方法具有O(n)空间和O(log(n) + k)查询时间复杂度,其中k为邻域大小,n为数据大小。另一方面,简洁的摘要方法只需要O(ε * n)内存空间和O(log(ε * n))查询时间复杂度,其中k比1小几个数量级。对来自波尔图和北京的两个大型数据集进行的实验表明,我们的方法仅使用几兆字节来汇总n = 8000万个数据点的数据集,并且能够每秒处理30K个查询,这比基线方法快了几个数量级。此外,本文还讨论了来自真实世界数据集的异常驾驶行为的有趣时空模式,以展示该工作在保险、交通安全增强和城市交通管理等许多行业的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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