基于模式分类的高速公路事故检测

H. Payne
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引用次数: 11

摘要

在城市高速公路上发现事故和其他降低通行能力的事件,例如在通行车道上发生残疾车辆,是高速公路交通管理的一个重要方面。该功能已在几个现有的高速公路监控系统中以事件检测算法的形式实现自动化。多特征事件检测算法利用交通数据和相关阈值的两个或多个功能来发出事件发生的信号。这些算法的构建是为了区分不同事故的交通状况模式。本文描述了一种以决策树为结构的多特征算法的校准和评估的一般方法。该方法应用于加州算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Freeway incident detection based upon pattern classification
The detection of accidents and other capacity reducing incidents, e.g., occurrences of disabled vehicles in traveled lanes, on urban freeways is an important aspect of freeway traffic management. This function has been automated in several existing freeway surveillance and control systems in the form of incident detection algorithms. Multiple feature incident detection algorithms use two or more functions of traffic data and associated thresholds to signal the occurrence of incidents. These algorithms are constructed to distinguish patterns of traffic conditions distinctive of incidents. In this paper, a general approach to the calibration and evaluation of multiple-feature algorithms which are structured as decision trees is described. This methodology is applied to the California algorithm.
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