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Improved Kernel Correlation Filter Tracking with Gaussian scale space

机译:具有高斯尺度空间的改进的核相关滤波器跟踪

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Recently, Kernel Correlation Filter (KCF) has achieved great attention in visual tracking filed, which provide excellent tracking performance and high possessing speed. However, how to handle the scale variation is still an open problem. In this paper, focusing on this issue that a method based on Gaussian scale space is proposed. Firstly, we will use KCF to estimate the location of the target, the context region which includes the target and its surrounding background will be the image to be matched. In order to get the matching image of a Gaussian scale space, image with Gaussian kernel convolution can be got. After getting the Gaussian scale space of the image to be matched, then, according to it to estimate target image under different scales. Combine with the scale parameter of scale space, for each corresponding scale image performing bilinear interpolation operation to change the size to simulate target imaging at different scales. Finally, matching the template with different size of images with different scales, use Mean Absolute Difference (MAD) as the match criterion. After getting the optimal matching in the image with the template, we will get the best zoom ratio s, consequently estimate the target size. In the experiments, compare with CSK, KCF etc. demonstrate that the proposed method achieves high improvement in accuracy, is an efficient algorithm.
机译:近年来,核相关滤波器(KCF)在视觉跟踪领域引起了极大的关注,其提供了出色的跟踪性能和较高的拥有速度。但是,如何处理尺度变化仍然是一个悬而未决的问题。针对这一问题,本文提出了一种基于高斯尺度空间的方法。首先,我们将使用KCF估计目标的位置,包括目标及其周围背景的上下文区域将成为要匹配的图像。为了获得高斯尺度空间的匹配图像,可以得到具有高斯核卷积的图像。得到图像的高斯尺度空间进行匹配后,再根据它来估计不同尺度下的目标图像。结合比例尺空间的比例尺参数,对每个对应的比例尺图像执行双线性插值运算以改变尺寸,以模拟不同比例尺的目标成像。最后,将模板与具有不同比例尺的不同大小的图像进行匹配,请使用平均绝对差(MAD)作为匹配标准。在获得与模板的图像的最佳匹配之后,我们将获得最佳的缩放比s,从而估算目标尺寸。在实验中,与CSK,KCF等进行比较表明,该方法具有较高的准确性,是一种有效的算法。

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