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Detection of Anomalous Traffic Patterns and Insight Analysis from Bus Trajectory Data

机译:从总线轨迹数据检测异常交通模式和洞察分析

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Detection of anomalous patterns from traffic data is closely related to analysis of traffic accidents, fault detection, flow management, and new infrastructure planning. Existing methods on traffic anomaly detection are modelled on taxi trajectory data and have shortcoming that the data may lose much information about actual road traffic situation, as taxi drivers can select optimal route for themselves to avoid traffic anomalies. We employ bus trajectory data as it reflects real traffic conditions on the road to detect city-wide anomalous traffic patterns and to provide broader range of insights into these anomalies. Taking these considerations, we first propose a feature visualization method by mapping extracted 3-dimensional hidden features to red-green-blue (RGB) color space with a deep sparse autoencoder (DSAE). A color trajectory (CT) is produced by encoding a trajectory with RGB colors. Then, a novel algorithm is devised to detect spatio-temporal outliers with spatial and temporal properties extracted from the CT. We also integrate the CT with the geographic information system (GIS) map to obtain insights for understanding the traffic anomaly locations, and more importantly the road influence affected by the corresponding anomalies. Our proposed method was tested on three real-world bus trajectory data sets to demonstrate the excellent performance of high detection rates and low false alarm rates.
机译:从交通数据检测异常模式与交通事故分析,故障检测,流量管理和新的基础设施规划密切相关。交通异常检测的现有方法在出租车轨迹数据上建模,并且已经缺点,数据可能会失去有关实际道路交通情况的许多信息,因为出租车司机可以选择最佳路线以避免交通异常。我们雇用总线轨迹数据,因为它反映了道路上的实际交通条件,以检测城市范围的异常交通模式,并为这些异常提供更广泛的见解。考虑这些考虑,我们首先通过将提取的三维隐藏特征映射到带有深稀疏的AutoEncoder(DSAE)的红色蓝色(RGB)色彩空间来提出功能可视化方法。通过编码具有RGB颜色的轨迹来生产颜色轨迹(CT)。然后,设计了一种新颖的算法,以检测从CT中提取的空间和时间特性的时空异常值。我们还将CT与地理信息系统(GIS)映射集成,以获得理解交通异常地点的见解,更重要的是受相应异常影响的道路影响。我们的提出方法在三个真实世界总线轨迹数据集上进行了测试,以证明高检测率和低误报率的优异性能。

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