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A Geometric Particle Filter for Template-Based Visual Tracking

机译:用于基于模板的视觉跟踪的几何粒子过滤器

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摘要

Existing approaches to template-based visual tracking, in which the objective is to continuously estimate the spatial transformation parameters of an object template over video frames, have primarily been based on deterministic optimization, which as is well-known can result in convergence to local optima. To overcome this limitation of the deterministic optimization approach, in this paper we present a novel particle filtering approach to template-based visual tracking. We formulate the problem as a particle filtering problem on matrix Lie groups, specifically the three-dimensional Special Linear group SL(3) and the two-dimensional affine group Aff(2). Computational performance and robustness are enhanced through a number of features: (i) Gaussian importance functions on the groups are iteratively constructed via local linearization; (ii) the inverse formulation of the Jacobian calculation is used; (iii) template resizing is performed; and (iv) parent-child particles are developed and used. Extensive experimental results using challenging video sequences demonstrate the enhanced performance and robustness of our particle filtering-based approach to template-based visual tracking. We also show that our approach outperforms several state-of-the-art template-based visual tracking methods via experiments using the publicly available benchmark data set.
机译:现有的基于模板的视觉跟踪方法(其目的是连续估计视频帧上对象模板的空间变换参数)主要基于确定性优化,众所周知,这可以导致收敛到局部最优。为了克服确定性优化方法的这一局限性,在本文中,我们提出了一种新颖的粒子滤波方法,用于基于模板的视觉跟踪。我们将该问题公式化为矩阵李群,特别是三维特殊线性群SL(3)和二维仿射群Aff(2)上的粒子滤波问题。通过许多功能增强了计算性能和鲁棒性:(i)通过局部线性化以迭代方式构造组上的高斯重要性函数; (ii)使用雅可比计算的逆公式; (iii)执行模板大小调整; (iv)开发并使用了亲子颗粒。使用具有挑战性的视频序列进行的大量实验结果证明,基于粒子滤波的基于模板的视觉跟踪方法具有增强的性能和鲁棒性。我们还显示,通过使用公开的基准数据集进行的实验,我们的方法优于基于模板的视觉跟踪方法。

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