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Part-based visual tracking with spatially regularized correlation filters

机译:具有空间正则化相关滤波器的基于零件的视觉跟踪

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摘要

Discriminative Correlation Filters (DCFs) have demonstrated excellent performance in visual object tracking. These methods utilize a periodic assumption of the training samples to efficiently learn a classifier on image patches; unfortunately, this also introduces unwanted boundary effects. Recently, Spatially Regularized Discriminative Correlation Filters (SRDCFs) were proposed to resolve this issue by introducing penalization weights to the filter coefficients, thereby efficiently reducing boundary effects by assigning higher weights to the background. However, due to the variable target scale, defining the penalization ratio is non trivial; thus, it is possible to penalize the image content while also penalizing the background. In this paper, we investigate SRDCFs and present a novel and efficient part-based tracking framework by exploiting multiple SRDCFs. Compared with existing trackers, the proposed method has several advantages. (1) We define multiple correlation filters to extract features within the range of the object, thereby alleviating the boundary effect problem and avoiding penalization of the target content. (2) Through the combination of cyclic object shifts with penalized filters to build part-based object trackers, there is no need to divide training samples into parts. (3) Comprehensive comparisons demonstrate that our approach achieves a performance equivalent to that of the baseline SRDCF tracker on a set of benchmark datasets, namely, OTB2013, OTB2015 and VOT2017. In addition, compared with other state-of-the-art trackers, our approach demonstrates superior performance.
机译:判别相关滤波器(DCF)在视觉对象跟踪方面表现出出色的性能。这些方法利用训练样本的周期性假设来有效地学习图像块上的分类器。不幸的是,这也会引入不必要的边界效应。近来,提出了空间正则化的鉴别相关滤波器(SRDCF),以通过对滤波器系数引入惩罚权重来解决该问题,从而通过将较高的权重分配给背景来有效地减少边界效应。但是,由于目标比例的变化,定义惩罚率并不容易。因此,可以在惩罚图像内容的同时还惩罚背景。在本文中,我们研究了SRDCF,并通过利用多个SRDCF提出了一种新颖且高效的基于零件的跟踪框架。与现有的跟踪器相比,该方法具有很多优点。 (1)我们定义了多个相关过滤器以提取对象范围内的特征,从而减轻了边界效应问题并避免了目标内容的惩罚。 (2)通过结合循环对象移动和惩罚滤波器来构建基于零件的对象跟踪器,无需将训练样本分为多个部分。 (3)综合比较表明,我们的方法在一组基准数据集(即OTB2013,OTB2015和VOT2017)上实现了与基准SRDCF跟踪器相同的性能。此外,与其他最新的跟踪器相比,我们的方法展示了卓越的性能。

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