High-Speed Tracking with Multi-kernel Correlation Filters

Ming Tang, Bin Yu, Fan Zhang, Jinqiao Wang
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引用次数: 76

Abstract

Correlation filter (CF) based trackers are currently ranked top in terms of their performances. Nevertheless, only some of them, such as KCF [26] and MKCF [48], are able to exploit the powerful discriminability of non-linear kernels. Although MKCF achieves more powerful discriminability than KCF through introducing multi-kernel learning (MKL) into KCF, its improvement over KCF is quite limited and its computational burden increases significantly in comparison with KCF. In this paper, we will introduce the MKL into KCF in a different way than MKCF. We reformulate the MKL version of CF objective function with its upper bound, alleviating the negative mutual interference of different kernels significantly. Our novel MKCF tracker, MKCFup, outperforms KCF and MKCF with large margins and can still work at very high fps. Extensive experiments on public data sets show that our method is superior to state-of-the-art algorithms for target objects of small move at very high speed.
基于多核相关滤波器的高速跟踪
基于相关滤波器(CF)的跟踪器目前在性能方面排名靠前。然而,只有KCF[26]和MKCF[48]等部分算法能够利用非线性核的强大可判别性。虽然MKCF通过在KCF中引入多核学习(multikernel learning, MKL)实现了比KCF更强大的可判别性,但其对KCF的改进非常有限,计算量也比KCF显著增加。在本文中,我们将以不同于MKCF的方式将MKL引入KCF。我们重新构造了具有上界的CF目标函数的MKL版本,显著减轻了不同核之间的负相互干扰。我们新颖的MKCF跟踪器MKCFup,在很大的余量上优于KCF和MKCF,并且仍然可以在非常高的fps下工作。在公共数据集上进行的大量实验表明,我们的方法优于目前最先进的算法,可以在非常高的速度下实现小运动目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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