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Learning spatial-temporally regularized complementary kernelized correlation filters for visual tracking

机译:学习空间暂时的正则化互补内核相关滤波器进行视觉跟踪

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摘要

Despite excellent performance shown by spatially regularized discriminative correlation filters (SRDCF) for visual tracking, some issues remain open that hinder further boosting their performance: first, SRDCF utilizes multiple training images to formulate its model, which makes it unable to exploit the circulant structure of the training samples in learning, leading to high computational burden; second, SRDCF is unable to efficiently exploit the powerfully discriminative nonlinear kernels, further negatively affecting its performance. In this paper, we present a novel spatial-temporally regularized complementary kernelized CFs (STRCKCF) based tracking approach. First, by introducing spatial-temporal regular-ization to the filter learning, the STRCKCF formulates its model with only one training image, which can not only facilitate exploiting the circulant structure in learning, but also reasonably approximate the SRDCF with multiple training images. Furthermore, by incorporating two types of kernels whose matrices are circulant, the STRCKCF is able to fully take advantage of the complementary traits of the color and HOG features to learn a robust target representation efficiently. Besides, our STRCKCF can be efficiently optimized via the alternating direction method of multipliers (ADMM). Extensive evaluations on OTB100 and VOT2016 visual tracking benchmarks demonstrate that the proposed method achieves favorable performance against state-of-the-art trackers with a speed of 40 fps on a single CPU. Compared with SRDCF, STRCKCF provides a 8 x speedup and achieves a gain of 5.5% AUC score on OTB 100 and 8.4% EAO score on VOT2016.
机译:尽管空间正规辨别相关滤波器(SRDCF)显示出优异的性能,但有些问题仍然打开,妨碍进一步提高其性能:首先,SRDCF利用多种培训图像制定其模型,这使得它无法利用循环结构学习中的培训样本,导致高计算负担;其次,SRDCF无法有效地利用有力辨别的非线性内核,进一步对其性能产生负面影响。在本文中,我们介绍了一种新的空间 - 时间正则化互补内核CFS(基于StrckCF)的跟踪方法。首先,通过向滤波器学习引入空间常规常规级别,STRCKCF仅用一个训练图像制定其模型,这不仅可以促进利用学习中的循环结构,而且还合理地近似于具有多个训练图像的SRDCF。此外,通过纳入两种类型的矩阵是循环的核,StrckCF能够充分利用颜色和猪的互补性特征,以有效地学习鲁棒目标表示。此外,我们的StrskCF可以通过乘法器(ADMM)的交替方向方法有效地优化。对OTB100和VOT2016视觉跟踪基准的广泛评估表明,所提出的方法对最先进的跟踪器实现有利性能,在单个CPU上的速度为40 fps。与SRDCF相比,StrckCF提供了8倍的加速,并在VOT2016上实现了5.5%AUC评分的5.5%AUC分数。

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