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Aerial infrared target tracking method based on KCF for frequency-domain scale estimation

机译:基于KCF的频域比例估计的空中红外目标跟踪方法

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摘要

The kernel correlation filter (KCF) tracking algorithm encounters the issue of tracking accuracy degradation due to large changes in scale and rotation of aerial infrared targets. Therefore, this paper proposes a new scale estimation KCF-based aerial infrared target tracking method, which can extract scale feature information of images in the frequency domain based on the distribution characteristics and change laws of frequency-domain energy. In addition, the proposed method can improve the accuracy of target scale information estimation. First, the KCF tracking algorithm is used to obtain the target position. Then, spectral eigenvalues are calculated as eigenvectors, and frequency-domain rotation scale invariance is adopted to extract the eigenvector between two frames as the target rotation change information. Reverse rotation is performed on the current frame spectrum map for isolating the effects of target rotation on scale information estimation. Then, the current target scale is estimated on the basis of the eigenvectors between the adjacent frames. Finally, the length-to-width ratio and the scale of the tracking box are updated on the basis of the target rotation information, which improves the adaptability of the tracking box to changes in the target scale and rotation. The results indicate that the proposed algorithm is suitable for stable tracking of target scales and rapid changes in attitudes. The average tracking accuracy and the average success rate of the algorithm are 0.954 and 0.782, which represent improvements of 5.3% and 18.9%, respectively, compared with the KCF algorithm. The average tracking success rate is improved by 4.1% compared with the discriminative scale space tracker algorithm, and the average tracking performance is better than that of related filter tracking algorithms based on other scale estimation methods. (C) 2020 Optical Society of America
机译:核相关滤波器(KCF)跟踪算法遇到了由于空中红外目标的规模和旋转的大变化而导致跟踪精度劣化的问题。因此,本文提出了一种新的估计基于KCF的航空红外目标跟踪方法,其可以基于分布特性和变化频域能量的变化规律提取频域中图像的比例特征信息。此外,所提出的方法可以提高目标尺度信息估计的准确性。首先,使用KCF跟踪算法来获得目标位置。然后,将频谱特征值计算为特征向量,采用频域旋转尺度不变性来提取两个帧之间的特征向量作为目标旋转改变信息。对当前帧谱图进行反向旋转,用于隔离目标旋转对比例信息估计的影响。然后,基于相邻帧之间的特征向量估计当前目标尺度。最后,基于目标旋转信息更新跟踪盒的长度与宽度比和跟踪箱的比例,这提高了跟踪盒的适应性以使目标比例和旋转的变化。结果表明,该算法适用于稳定跟踪目标尺度和态度的快速变化。与KCF算法相比,算法的平均跟踪精度和平均成功率分别代表了5.3%和18.9%的提高。与鉴别规模空间跟踪算法相比,平均跟踪成功率提高了4.1%,并且平均跟踪性能基于其他刻度估计方法优于相关滤波器跟踪算法的平均跟踪性能。 (c)2020美国光学学会

著录项

  • 来源
    《Applied optics》 |2020年第17期|共12页
  • 作者单位

    Northwest Polytech Univ Sch Astronaut 127 Youyi Rd West Xian 710072 Peoples R China;

    Chinese Air Force Equipment Dept Project Ctr Beijing 100097 Peoples R China;

    Northwest Polytech Univ Sch Astronaut 127 Youyi Rd West Xian 710072 Peoples R China;

    Northwest Polytech Univ Sch Astronaut 127 Youyi Rd West Xian 710072 Peoples R China;

    Northwest Polytech Univ Sch Astronaut 127 Youyi Rd West Xian 710072 Peoples R China;

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  • 正文语种 eng
  • 中图分类 应用;
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