A method for automatic detection of traffic incidents using neural networks

I. Ohe, H. Kawashima, M. Kojima, Y. Kaneko
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引用次数: 28

Abstract

One of the most important aspects of traffic management systems is their ability to detect traffic incidents such as accidents, disabled vehicles, and obstacles on the road. The incidents affect highway drivers and cause traffic congestion, so an immediate and automatic detection method is desired. We think that the changes in traffic average in case of traffic incidents have certain patterns different from the normal case. Our research tries to detect traffic incidents immediately and automatically by using neural networks, which use one minute average traffic data as input, and decide whether an incident has occurred or not. To train the network we used traffic data from various locations where accidents had occurred and not. The former are generated by a micro simulator and the latter are collected by using ultrasonic vehicle detectors. To reduce the number of false detections so as to improve the process of training of the neural network, we added some data with similar average change patterns as observed when incidents occurred. As a result, we confirmed that adding enough combinations of similar average change patterns was very effective in increasing the recognition rate and to reduce the number of false detections.
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交通管理系统最重要的方面之一是它们能够检测交通事故、残疾车辆和道路上的障碍物等交通事件。这些事故影响到公路驾驶员,造成交通拥堵,因此需要一种即时、自动的检测方法。我们认为交通事故发生时交通平均流量的变化有一定不同于正常情况的规律。我们的研究试图通过使用神经网络立即自动检测交通事件,神经网络使用一分钟的平均交通数据作为输入,并确定事件是否发生。为了训练这个网络,我们使用了来自不同地点的交通数据,这些地点发生过事故,也没有发生过事故。前者由微型模拟器产生,后者由超声波探测仪采集。为了减少误检的数量,从而改善神经网络的训练过程,我们加入了一些与事件发生时观察到的平均变化模式相似的数据。结果表明,加入足够多的相似平均变化模式组合,在提高识别率和减少误检次数方面非常有效。
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