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A Fast, Scalable, Unsupervised Approach to Real-time Traffic Incident Detection

机译:快速,可扩展,无监督的实时交通事件检测方法

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Traffic congestion is occasionally caused by an unusual traffic incident such as a road accident or a big sporting event. The congestion could have been avoided if the traffic authority had detected and responded to it quickly and appropriately. This article explores a machine learning approach for detecting anomalous traffic incidents in real-time using GPS data collected from thousands of taxicabs in Bangkok Metropolitan area. The detection model is based on applying Principal Component Analysis (PCA) on various features extracted from overlapping fixed-length time windows over a target region. After the model has been trained, it is validated on past data and is able to discover meaningful anomalous incidents that have been verified by cross-checking with other information sources. Our approach does not require any street layout information, is computationally efficient, and can be deployed to monitor realtime traffic over large areas at scales.
机译:交通拥堵偶尔是由不寻常的交通事故(例如交通事故或大型体育赛事)引起的。如果交通管理部门能够快速适当地检测到并做出响应,则可以避免拥塞。本文探索了一种机器学习方法,该方法使用从曼谷大都市区数千辆出租车中收集到的GPS数据实时检测异常交通事件。该检测模型基于对从目标区域上重叠的固定长度时间窗口中提取的各种特征应用主成分分析(PCA)。对模型进行训练后,将对过去的数据进行验证,并能够发现有意义的异常事件,这些异常事件已通过与其他信息源进行交叉检查得到了验证。我们的方法不需要任何街道布局信息,计算效率高,并且可以部署为大规模监视大型区域的实时交通。

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