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Application of deep learning and unmanned aerial vehicle technology in traffic flow monitoring

机译:深度学习与无人机技术在交通流量监控中的应用

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Intelligent video surveillance technology has been increasingly used in the field of transportation. Real-timely capturing traffic video data through the UAV is a new way to get road condition. In this paper, we set the statistics of road traffic flow as the starting point. After analyzing the characteristics of videos shot by the UAV, we choose to use the deep learning framework based on Faster-RCNN to train a vehicle detection model to detect vehicle targets in videos. The motion track of vehicles in the shooting scene were drawn according to the result of object detection. In the end, analyzing the track and calculating the traffic flow. From the experimental results, it can be seen that deep learning method can achieve a high detection accuracy and based on this, we can calculate the traffic flow well.
机译:智能视频监控技术已越来越多地应用于交通领域。通过无人机实时捕获交通视频数据是获取路况的一种新方法。本文以道路交通流量统计为出发点。在分析了无人机拍摄的视频的特征之后,我们选择使用基于Faster-RCNN的深度学习框架来训练车辆检测模型,以检测视频中的车辆目标。根据物体检测的结果绘制出拍摄场景中车辆的运动轨迹。最后,分析轨道并计算交通流量。从实验结果可以看出,深度学习方法可以达到较高的检测精度,并以此为基础,可以很好地计算出交通流量。

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