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A Novel Ego-Motion Compensation Strategy for Automatic Target Tracking in FLIR Video Sequences taken from UAVs

机译:从无人机获取的FLIR视频序列中自动目标跟踪的新型自我运动补偿策略

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摘要

Tracking targets in forward-looking infrared (FLIR) video sequences taken from airborne platforms is a challenging task. Several tracking failure modes can occur; in particular, discontinuities due to platform's motion can produce the so called ego-motion failure leading to unrecoverable errors in tracking the target. A novel ego-motion compensation technique for UAVs (unmanned aerial vehicles) is proposed. Data received from the autopilot can be used to predict the motion of the platform, thus allowing to identify a smaller region of the image (subframe) where the candidate target has to be searched for in the next frame of the sequence. The presented methodology is compared with a recently robust algorithm for automatic target tracking; experimental results show that the proposed motion estimation approach helps to improve performance both in terms of frames processed per second (targets are searched in smaller regions) and in terms of robustness (targets are correctly tracked for all the sequence's frames).
机译:跟踪从机载平台获取的前瞻性红外(FLIR)视频序列中的目标是一项艰巨的任务。可能会出现几种跟踪失败模式;特别是由于平台运动而引起的不连续会产生所谓的自我运动失败,从而导致在追踪目标时出现不可恢复的错误。提出了一种新颖的无人机运动自我补偿技术。从自动驾驶仪接收的数据可用于预测平台的运动,从而允许识别图像(子帧)的较小区域,在该区域中必须在序列的下一帧中搜索候选目标。将提出的方法与最近用于自动目标跟踪的强大算法进行了比较;实验结果表明,所提出的运动估计方法无论是每秒处理的帧数(在较小区域中搜索目标)还是鲁棒性(针对所有序列帧的目标均正确跟踪)均有助于提高性能。

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