Region covariance descriptors calculated over the salient points for target tracking

Serdar Çakır, T. Aytaç, A. Yildirim, S. Beheshti, O. Gerek, A. Çetin
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Abstract

Features extracted at salient points in the image are used to construct region covariance descriptor (RCD) for target tracking purposes. In the classical approach, the RCD is computed by using the features at each pixel location and thus, increases the computational cost in the scenarios where large targets are tracked. The approach in which the features at each pixel location are used, is redundant in cases where image statistics do not change significantly between neighboring pixels. Furthermore, this may decrease the tracking accuracy while tracking large targets which have background dominating structures. In the proposed approach, the salient points are extracted via the Shi and Tomasi's minimum eigenvalue method and a descriptor based target tracking structure is constructed based on the features extracted only at these salient points. Experimental results indicate that the proposed method provides comparable and in some cases even better tracking results compared to the classical method while providing a computationally more efficient structure.
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在显著点上计算区域协方差描述符,用于目标跟踪
在图像显著点提取的特征用于构建区域协方差描述符(RCD)用于目标跟踪。在传统的方法中,RCD是通过使用每个像素位置的特征来计算的,因此,在跟踪大型目标的情况下,增加了计算成本。使用每个像素位置的特征的方法在图像统计数据在相邻像素之间没有显着变化的情况下是冗余的。此外,在跟踪具有背景支配结构的大型目标时,这可能会降低跟踪精度。在该方法中,通过Shi和Tomasi的最小特征值方法提取显著点,并基于这些显著点提取的特征构建基于描述子的目标跟踪结构。实验结果表明,该方法在提供计算效率更高的结构的同时,提供了与经典方法相当甚至更好的跟踪结果。
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