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首页> 外文期刊>EURASIP journal on advances in signal processing >Covariance Tracking via Geometric Particle Filtering
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Covariance Tracking via Geometric Particle Filtering

机译:通过几何粒子滤波进行协方差跟踪

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摘要

Region covariance descriptor recently proposed has been approved robust and elegant to describe a region of interest, which has been applied to visual tracking. We develop a geometric method for visual tracking, in which region covariance is used to model objects appearance; then tracking is led by implementing the particle filter with the constraint that the system state lies in a low dimensional manifold: affine Lie group. The sequential Bayesian updating consists of drawing state samples while moving on the manifold geodesics; the region covariance is updated using a novel approach in a Riemannian space. Our main contribution is developing a general particle filtering-based racking algorithm that explicitly take the geometry of affine Lie groups into consideration in deriving the state equation on Lie groups. Theoretic analysis and experimental evaluations demonstrate the promise and effectiveness of the proposed tracking method.
机译:最近提出的区域协方差描述符已被批准具有鲁棒性和优雅性,可以描述感兴趣的区域,该区域已应用于视觉跟踪。我们开发了一种用于视觉跟踪的几何方法,其中使用区域协方差来建模对象的外观;然后通过在系统状态位于低维流形:仿射李群的约束下实施粒子滤波器来进行跟踪。连续的贝叶斯更新包括在流形测地线上移动时绘制状态样本。在黎曼空间中使用一种新颖的方法来更新区域协方差。我们的主要贡献是开发了一种基于粒子滤波的通用货架算法,该算法在导出李群的状态方程时明确考虑了仿射李群的几何形状。理论分析和实验评估证明了该跟踪方法的前景和有效性。

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