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Comparison of stochastic filtering methods for 3D tracking

机译:3D跟踪的随机滤波方法的比较

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摘要

In the recent years, the 3D visual research has gained momentum with publications appearing for all aspects of 3D including visual tracking. This paper presents a review of the literature published for 3D visual tracking over the past five years. The work particularly focuses on stochastic filtering techniques such as particle filter and Kalman filter. These two filters are extensively used for tracking due to their ability to consider uncertainties in the estimation. The improvement in computational power of computers and increasing interest in robust tracking algorithms lead to increase in the use of stochastic filters in visual tracking in general and 3D visual tracking in particular. Stochastic filters are used for numerous applications in the literature such as robot navigation, computer games and behavior analysis. Kalman filter is a linear estimator which approximates system's dynamics with Gaussian model while particle filter approximates systems dynamics using weighted samples. In this paper, we investigate the implementation of Kalman and particle filters in the published work and we provide comparison between these techniques qualitatively as well as quantitatively. The quantitative analysis is in terms of computational time and accuracy. The quantitative analysis has been implemented using four parameters of the tracked object which are object position, velocity, size of bounding ellipse and orientation angle.
机译:近年来,随着3D各个方面(包括视觉跟踪)的出版物的出现,3D视觉研究得到了发展。本文介绍了过去五年中为进行3D视觉跟踪而出版的文献。这项工作特别关注于随机滤波技术,例如粒子滤波器和卡尔曼滤波器。这两个滤波器由于能够考虑估计中的不确定性而被广泛用于跟踪。计算机的计算能力的提高以及对鲁棒跟踪算法的日益增长的兴趣导致通常在视觉跟踪中,尤其是在3D视觉跟踪中,随机滤波器的使用增加。随机滤波器用于文献中的许多应用,例如机器人导航,计算机游戏和行为分析。卡尔曼滤波器是一种线性估计器,它可以利用高斯模型来近似系统的动力学,而粒子滤波器可以使用加权样本来近似系统的动力学。在本文中,我们研究了已发表的工作中卡尔曼滤波和粒子滤波的实现,并且定性和定量地比较了这两种技术。定量分析是根据计算时间和准确性。使用被跟踪物体的四个参数进行了定量分析,这四个参数是物体的位置,速度,边界椭圆的大小和方向角。

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