Deep learning assisted visual tracking of evader-UAV

international conference on unmanned aircraft systems(2021)

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摘要
In this work the visual tracking of an evading UAV using a pursuer-UAV is examined. The developed method combines principles of deep learning, optical flow, intra-frame homography and correlation based tracking. A Yolo tracker for short term tracking is employed, complimented by optical flow and homography techniques. In case there is no detected evader-UAV, the MOSSE tracking algorithm re-initializes the search and the PTZ-camera zooms-out to cover a wider Filed of View. The camera's controller adjusts the pan and tilt angles so that the evader-UAV is as close to the center of view as possible, while its zoom is commanded in order to for the captured evader-UAV bounding box cover as much as possible the captured-frame. Experimental studies are offered to highlight the algorithm's principle and evaluate its performance.
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关键词
optical flow,intra-frame homography,correlation based tracking,short term tracking,detected evader-UAV,MOSSE tracking algorithm re-initializes,PTZ-camera zooms-out,captured evader-UAV,visual tracking,evading UAV,pursuer-UAV,deep learning
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