基于BLOB和Mean-Shift跟踪的红绿灯区域车辆分类与违规检测

M. Bachtiar, Achmad Rahman Mawardi, Adnan Rachmat Anom Besari
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引用次数: 4

摘要

遵守交通规则是每个司机的义务。虽然遵守交通规则是强制性的,但在道路上发生了许多违规行为,例如突破道路标志或交通信号灯。警方已经实施了许多创新措施来减少交通违法行为的发生,但他们在处理交通违法行为方面仍然效率低下。在本研究中,建立了一个视觉系统来识别车辆(汽车和摩托车),并识别驾驶员在十字路口的违规行为。在本研究中,建立了一个视觉系统来识别车辆(汽车和摩托车),并识别驾驶员在十字路口的违规行为。车辆违章数据来自安装在路口的闭路电视摄像头。该系统用于车辆检测和交通违章检测。通过搜索车辆轮廓进行车辆检测的过程采用BLOB方法。此外,在跟踪车辆使用均值移位算法。识别道路标线违规行为。我们利用图像处理技术在CCTV视频中创建一个边界作为参考。当交通灯标志停止时,车辆没有停在参考线上,车辆被认为是交通违规。当车辆必须转弯或直行时,必须与参考线方向一致,否则将被视为违反交通规则。摩托车和汽车的检测结果分别为79%和71%。与此同时,违反道路标志的平均结果为58%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle Classification and Violation Detection on Traffic Light Area using BLOB and Mean-Shift Tracking Method
Obeying traffic regulations is an obligation for every driver. Although obeying traffic regulations is mandatory, there are many violations that occur on the road such as breaking through road markings or traffic lights. The police have implemented many innovations to reduce the occurrence of traffic violations, but they are still inefficient in handling traffic violations. In this research, a vision system was built to recognize vehicles (cars and motorcycles) and to recognize violations committed by drivers at road intersections. In this study, a vision system was built to recognize vehicles (cars and motorcycles) and to recognize violations committed by drivers at road intersections. Vehicle violation data is taken from CCTV cameras installed at road junctions. the system works for vehicle detection and traffic violation detection. The process of vehicle detection by searching for vehicle contours uses the BLOB method. Furthermore, in tracking vehicles using the Mean Shift Algorithm. To recognize road marking violations. We create a border as a reference in the CCTV video using image processing. When the traffic light sign stops, and the vehicle does not stop at the reference line, the vehicle is considered a traffic violation. When the vehicle has to turn, or go straight, it must be in the same direction as the reference line, otherwise it is considered a traffic violation. The detection results for motorcycles are 79% and cars are 71%. Meanwhile, the average result of violations on road markings is 58%.
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