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Multi-objective real-time vehicle detection method based on yolov5

机译:基于YOLOV5的多目标实时车辆检测方法

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Object detection is a very important task in artificial intelligence and deep learning. Its purpose is to automatically locate the position of an object in a picture and mark the type of the object. In order to solve the problem that the number of false checks in the process of traditional detection methods is too large to affect the accuracy of detection results, a multi-objective real-time detection method for vehicles based on yolov5 is designed. The design of vehicle multi-target real-time detection method is completed by building vehicle multi-target detection model based on yolov5, acquiring vehicle video image information and real-time vehicle multi-target tracking detection. Through comparative experiments, it is further proved that the designed detection method can effectively reduce the number of false checks, improve the accuracy of monitoring results, and meet the accuracy requirements of the Intelligent Transportation Command Center for vehicle information acquisition.
机译:对象检测是人工智能和深度学习中的一个非常重要的任务。 其目的是自动定位图片中对象的位置并标记对象的类型。 为了解决传统检测方法过程中的假检查的数量太大而无法影响检测结果的准确性,设计了基于YOLOV5的车辆的多目标实时检测方法。 通过基于YOLOV5的车辆多目标检测模型来完成车辆多目标实时检测方法的设计,获取车辆视频图像信息和实时车辆多目标跟踪检测。 通过比较实验,进一步证明了设计的检测方法可以有效地减少错误检查的数量,提高监测结果的准确性,并满足车辆信息采集的智能运输指令中心的准确性要求。

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