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Severity detection of traffic accidents at intersections based on vehicle motion analysis and multiphase linear regression

机译:基于车辆运动分析和多相线性回归的交叉路路口交通事故的严重性检测

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This paper proposes a new approach to describe traffic scene including vehicle collisions and vehicle anomalies at intersections by video processing and motion statistic techniques. The research mainly targets on extracting abnormal event characteristics at intersections and learning normal traffic flow by trajectory clustering techniques. Detecting and analyzing accident events are done by observing partial vehicle trajectories and motion characteristics. The model implements video preprocessing, vehicle detection and tracking in order to extract motion characteristics through vehicle existence on road lanes. Activity patterns are determined by trajectory clustering analysis. Normal and abnormal traffic events are segregated by using log-likelihood thresholds. Abnormal traffic events and collisions are characterized using linear multiphase regression analysis technique, which apply semantic information extraction about traffic incidents.
机译:本文提出了一种新方法来描述包括视频处理和运动统计技术在交叉口的车辆碰撞和车辆异常的新方法。该研究主要是通过轨迹聚类技术提取交叉点处的异常事件特征和学习正常的交通流量。通过观察部分车辆轨迹和运动特性来完成检测和分析事故事件。该模型实现了视频预处理,车辆检测和跟踪,以通过在公路车道上的车辆存在来提取运动特性。活动模式由轨迹聚类分析确定。通过使用日志似然阈值来分离正常和异常的交通事件。异常的交通事件和碰撞是使用线性多相回归分析技术的特征,其应用关于交通事故的语义信息提取。

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