Real-Time Traffic Analysis using Deep Learning Techniques and UAV based Video

2019 16th IEEE International Conference on Advanced Video and Signal Based Surveillance (AVSS)(2019)

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摘要
In urban environments there are daily issues of traffic congestion which city authorities need to address. Realtime analysis of traffic flow information is crucial for efficiently managing urban traffic. This paper aims to conduct traffic analysis using UAV-based videos and deep learning techniques. The road traffic video is collected by using a position-fixed UAV. The most recent deep learning methods are applied to identify the moving objects in videos. The relevant mobility metrics are calculated to conduct traffic analysis and measure the consequences of traffic congestion. The proposed approach is validated with the manual analysis results and the visualization results. The traffic analysis process is real-time in terms of the pre-trained model used.
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关键词
real-time traffic analysis,deep learning techniques,urban environments,traffic congestion,city authorities,traffic flow information,urban traffic,UAV-based videos,road traffic video,position-fixed UAV,manual analysis
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