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World Coordinate Virtual Traffic Cameras: Edge-Based Transformation and Merging of Multiple Surveillance Video Sources

机译:世界坐标虚拟交通摄像机:基于边缘的转换和多次监控视频源的合并

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Video cameras are an important high-fidelity source of surveillance information. They are especially useful in traffic monitoring scenarios in smart cities to reduce congestion, regulate traffic and enforce regulations. Unfortunately, increasing the number of cameras at a specific location makes it harder to keep quality attention on the scene due to high amount of unstructured data mixed with privacy breaching non-essential data, like faces of pedestrians etc. In this paper, we propose a method for real-time merging of multiple surveillance video sources to extract the required information in a single, world coordinate-based, virtual traffic camera view. Such a composite view allows for future improvements in quality of critical details using techniques as super resolution, while at the same time removing unnecessary private information. The implementation is validated on real world traffic data using NVIDIA Jetson TX2 as an edge device and consists of perspective transformation, image merging and object detection/tracking using YOLOv4 machine learning model for the extraction of significant objects only.
机译:摄像机是监视信息的重要高保真源。它们在智能城市的交通监控方案中特别有用,以减少拥堵,规范交通和执行法规。不幸的是,由于大量的非结构化数据与隐私违反非必要数据,如行人等的脸部,因此增加了在特定位置的摄像机数量更加难以保持高质量的关注。在本文中,我们提出了一个用于多个监控视频源的实时合并的方法,以提取单个世界坐标的虚拟流量相机视图中所需信息。这种复合视图允许使用技术作为超级分辨率的关键细节的质量的未来改进,同时删除不必要的私人信息。使用NVIDIA JETSON TX2作为边缘设备的现实世界流量数据验证了实现,并由使用YOLOV4机器学习模型仅用于提取重要对象的透视变换,图像合并和对象检测/跟踪。

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