Nighttime vehicle detection and classification via headlights trajectories matching

Tuan-Anh Vu, L. Pham, T. K. Huynh, Synh Viet-Uyen Ha
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引用次数: 9

Abstract

Vehicle detection and classification is an essential application in traffic surveillance system (TSS). However, recognizing moving vehicle at nighttime is more challenging because of either poorly (lack of street lights) or brightly illuminations and chaos traffic of motorbikes. Adding to this is various type of vehicles travels on the same road which falsifies the pairing results. So, this research proposes an algorithm for vehicle detection and classification at nighttime surveillance scenes which consists of headlight segmentation, headlight detection, headlight tracking and pairing and vehicle classification (two-wheeled and four-wheeled vehicles). First, bright objects are segmented by using the luminance and color variations. Then, the candidate headlights are detected and validated through the characteristics of the headlights such as area, centroid, rims, and shape. Afterward, we present a way to tracking and pairing the headlights by calculating the area ratio, spatial information on the vertical and horizontal of a headlight. Finally, the vehicle is classified into two-wheeled and four-wheeled vehicles. The novelty of our work is that headlights are validated and paired using trajectory tracing technique. The evaluation results are promising for a detection rate of 81.19% in nighttime scenes.
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夜间车辆检测和分类,通过前灯轨迹匹配
车辆检测与分类是交通监控系统(TSS)的重要应用。然而,在夜间识别移动的车辆更具挑战性,因为要么是糟糕的(缺乏路灯),要么是明亮的照明和混乱的摩托车交通。除此之外,不同类型的车辆在同一条道路上行驶,这伪造了配对结果。因此,本研究提出了一种夜间监控场景下的车辆检测与分类算法,该算法由前照灯分割、前照灯检测、前照灯跟踪与配对、车辆分类(两轮和四轮车辆)四个部分组成。首先,利用亮度和颜色变化对明亮物体进行分割。然后,通过前照灯的面积、质心、轮辋和形状等特征对候选前照灯进行检测和验证。随后,我们提出了一种方法来跟踪和配对的计算面积比,空间信息的垂直和水平的一个大灯。最后,车辆分为两轮和四轮车辆。我们工作的新颖之处在于,使用轨迹跟踪技术验证和配对前灯。评价结果表明,夜间场景的检测率为81.19%。
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