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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Target tracking algorithm combined part-based and redetection for UAV
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Target tracking algorithm combined part-based and redetection for UAV

机译:目标跟踪算法组合的零件基于和重新检测无人机

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摘要

In the process of target tracking for UAV video images, the performance of the tracking algorithm declines or even the tracking fails due to target occlusion and scale variation. This paper proposes an improved target tracking algorithm based on the analysis of the tracking framework of the kernel correlation filter. First, four subblocks around the center of the target center are divided. A correlation filter fusing Histogram of Oriented Gradient (HOG) feature and Color Name (CN) feature tracks separately each target subblocks. According to the spatial structure characteristics in the subblocks, the center location and scale of the target are estimated. Secondly, the correct center location of target is determined by the global filter. Then, a tracking fault detection method is proposed. When tracking fails, the target redetection module which uses the normalized cross-correlation algorithm (NCC) to obtain the candidate target set in the re-detection area is started. Besides, this algorithm uses the global filter to obtain real target from the candidate set. In the meanwhile, this algorithm adjusts sectionally the learning rate of the classifiers according to detection results. Lastly, the performance of this algorithm is verified on the UAV123 dataset. The results show that compared with several mainstream methods, that of this algorithm is significantly improved when dealing with target scale variation and occlusion.
机译:在UAV视频图像的目标跟踪过程中,由于目标遮挡和比例变化,跟踪算法的性能下降或甚至跟踪失败。本文提出了一种基于核相关滤波器跟踪框架分析的改进的目标跟踪算法。首先,将目标中心中心周围的四个子块分开。面向梯度(HOG)特征和颜色名称(CN)的相关滤波器融合直方图分别追踪每个目标子块。根据子块中的空间结构特性,估计目标的中心位置和比例。其次,目标的正确中心位置由全局过滤器确定。然后,提出了一种跟踪故障检测方法。当跟踪失败时,开始使用归一化互相关算法(NCC)以获得在重新检测区域中的候选目标集的目标重新检制模块。此外,该算法使用全局过滤器从候选集获取真实目标。同时,该算法根据检测结果调整分类器的学习率。最后,在UAV123数据集上验证了该算法的性能。结果表明,与若干主流方法相比,在处理目标规模变化和闭塞时,该算法的算法的比较显着提高。

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