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Real-time Vision-based Multiple Vehicle Detection and Tracking for Nighttime Traffic Surveillance

机译:基于实时视觉的多车辆检测和夜间交通监测的跟踪

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摘要

This study presents an effective system for detecting and tracking moving vehicles in nighttime traffic scene for traffic surveillance. The proposed method identifies vehicles based on detecting and locating vehicle headlights and taillights by using the techniques of image segmentation and pattern analysis. First, to effectively extract bright objects of interest, a fast bright-object segmentation process based on automatic multilevel histogram thresholding is applied on the nighttime road-scene images. This automatic multilevel thresholding approach can provide robustness and adaptability for the detection system to be operated well under various illumination conditions at night. The extracted bright objects are processed by a spatial clustering and tracking procedure by locating and analyzing the spatial and temporal features of vehicle light patterns, and then identifying and classifying the moving cars and motorbikes in the traffic scenes. Experimental results demonstrate that the proposed approach is feasible and effective for vehicle detection and identification in various nighttime environments for traffic surveillance.
机译:本研究提出了一种有效的系统,用于在夜间交通场景中检测和跟踪移动车辆进行交通监测。所提出的方法通过使用图像分割和模式分析的技术来识别基于检测和定位车前灯和尾灯的车辆。首先,为了有效地提取利益的明亮对象,在夜间路景图像上应用基于自动多级直方图阈值的快速亮度 - 对象分割过程。这种自动多级阈值阈值方法可以为在夜间各种照明条件下运行良好的检测系统提供鲁棒性和适应性。通过定位和分析车辆光图案的空间和时间特征,然后在交通场景中识别和分析移动汽车和摩托车的空间和时间特征,通过空间聚类和跟踪程序处理提取的明亮物体。实验结果表明,在交通监测的各种夜间环境中,拟议的方法是可行的和有效的车辆检测和识别。

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