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Real-time robust human tracking based on Lucas-Kanade optical flow and deep detection for embedded surveillance

机译:基于Lucas-Kanade光流和深度检测的实时鲁棒性人工跟踪,用于嵌入式监控

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Object tracking is one of the most important functions in surveillance systems, especially in the system with Pan/Tilt/Zoom Camera. In this paper, we propose a real-time robust human tracking method for embedded surveillance. The proposed human tracking method tracks human objects based on Lucas-Kanade (LK) optical flow algorithm [1], rectifies tracking error due to accumulation or object missing by readjusting tracked human object bounding boxes periodically. Human localization information is obtained from a reliable deep learning-based human. It also handles occlusion by combination of LK information and human detector information. In order to achieve fast and robust processing, computationally light but reliable human detector is developed based on YOLOv2 object detector [2] model. Through experiments in comparison with other state-of-the-art tracking methods, it is shown that the proposed human tracking method operates fast and reliably with occlusion handling, and that performs better than or comparable to others.
机译:对象跟踪是监视系统中最重要的功能之一,尤其是在带有平移/倾斜/缩放摄像机的系统中。在本文中,我们提出了一种用于嵌入式监视的实时鲁棒性人工跟踪方法。所提出的人类跟踪方法基于卢卡斯-卡纳德(LK)光流算法[1]来跟踪人类对象,通过定期重新调整跟踪的人类对象边界框来纠正由于累积或对象丢失而导致的跟踪错误。人类本地化信息是从可靠的基于深度学习的人类获得的。它还通过组合LK信息和人体检测器信息来处理遮挡。为了实现快速和鲁棒的处理,基于YOLOv2对象检测器[2]模型开发了计算轻巧但可靠的人体检测器。通过与其他最新跟踪方法进行比较的实验,结果表明,所提出的人工跟踪方法在遮挡处理方面运行迅速且可靠,并且性能优于或可与其他方法相媲美。

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