A Fast, Scalable, Unsupervised Approach to Real-time Traffic Incident Detection | IEEE Conference Publication | IEEE Xplore

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


Abstract:

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 tr...Show More

Abstract:

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.
Date of Conference: 11-13 July 2018
Date Added to IEEE Xplore: 11 September 2018
ISBN Information:
Conference Location: Nakhonpathom, Thailand
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