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Method of Automated Detection of Traffic Violation with a Convolutional Neural Network

机译:卷积神经网络的交通违章自动检测方法

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This article describes the relevance of developing methods and systems for detection photo-video violations of the Rules of the road. The proposed method includes several steps: 1) detecting of the three classes of objects on a video sequence (pedestrian crossing, a motor vehicle and a human on the pedestrian crossing; 2) tracking the trajectories of the vehicle and the human on the pedestrian crossing; 3) comparing the paths of the pedestrian and the vehicle and determining whether there has been a violation of the Rules of the road for a certain period of time. For real-time object detection, we used neural network YOLO V3.
机译:本文介绍了开发方法和系统以检测违反道路法规的视频录像的相关性。所提出的方法包括几个步骤:1)在视频序列上检测三类物体(人行横道,机动车和人行横道上的行人; 2)跟踪人行横道上的车辆和人的轨迹; 3)比较行人和车辆的路径,并确定在一定时间内是否违反了道路规则。对于实时物体检测,我们使用了神经网络YOLO V3。

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