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Violation target detection based on video streaming

机译:基于视频流的违规目标检测

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摘要

Based on the increasing number of pedestrians and non-motor vehicles running red lights, the use of video stream to detect illegal targets, obtain evidence of violations, as a basis for punishment, can effectively reduce the occurrence of violations. Based on the YOLOv3 algorithm, pedestrian and non-motor vehicle detection can be obtained by combining skin color detection and face detection, and redundant target information can be filtered by location score function, which can reduce the misjudgment of pedestrians. For non-motor vehicle testing, the cyclist’s position is determined by the re-matching of face or pedestrian position with non-motor vehicle. The border regression operation is carried out on the prediction box to make the non-motor vehicle detection box contain the information of cyclists.
机译:基于越来越多的行人和非机动车辆运行红灯,使用视频流来检测非法目标,获得违规的证据,作为惩罚的基础,可以有效减少违规的发生。基于YOLOV3算法,可以通过组合肤色检测和面部检测来获得行人和非机动车辆检测,并且可以通过位置得分功能来滤波冗余目标信息,这可以减少行人的误解。对于非机动车辆测试,骑自行车者的位置由与非机动车辆的面部或行人位置的重新匹配确定。边界回归操作在预测箱上执行,使非机动车辆检测盒包含骑自行车者的信息。

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