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TRAFFIC INCIDENT DETECTION BASED ON ROUGH SETS APPROACH

机译:基于粗糙集方法的交通事故检测

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摘要

This paper presents an approach to detect traffic incident which uses the rules generated by rough sets theory to classify traffic patterns for incident detection.Performance metrics such as detection rate, false alarm rate, mean time to detection and classification rate are computed.By way of illustration, a simulated traffic data set which is balanced and the real 1-880 freeway traffic data collected in California which is imbalanced are used to assess the detection performance of this approach.Rough sets method is sensitive to attributes discretization proven by the experimental results, so cross validation was used to conduct the discrete operation in order to improve the classification accuracy.Further tests also indicate that rules filter can enhance the performance of classification.Our experiments illustrate the incident detection models based on rough sets theory have favorable performance compared with those based on support vector machine.At last, a brief conclusion as well as future research needed is also discussed.
机译:本文提出了一种交通事故检测方法,利用粗糙集理论生成的规则对交通事件进行分类,以进行交通事件检测,并计算出检测率,误报率,平均检测时间和分类率等性能指标。举例来说,一个模拟的交通数据集是平衡的,而在加利福尼亚州收集的真实的1-880高速公路交通数据是不平衡的,用于评估此方法的检测性能。粗糙集方法对实验结果证明的属性离散敏感,进一步的测试还表明,规则过滤器可以提高分类的性能。我们的实验表明,基于粗糙集理论的事件检测模型与常规模型相比具有良好的性能。基于支持向量机。最后,也有一个简短的结论还将讨论将来需要的研究。

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