Covariance Matching for PDE-based Contour Tracking

Bo Ma, Yuwei Wu
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引用次数: 3

Abstract

This paper presents a novel formulation for object tracking. We model the second-order statistics of image regions and perform covariance matching under the variational level set framework. Specifically, covariance matrix is adopted as a visual object representation for partial differential equation (PDE) based contour tracking. Log-Euclidean calculus is used as a covariance distance metric instead of Euclidean distance which is unsuitable for measuring the similarities between covariance matrices, because the matrices typically lie on a non-Euclidean manifold. A novel image energy functional is formulated by minimizing the distance metrics between the candidate object region and a given template, and maximizing the ones between the background region and the template. The corresponding gradient flow is then derived according to a variational approach, enabling PDE-based visual tracking. Experiments on synthetic and real video sequences prove the validity of the proposed method.
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基于pde的轮廓跟踪的协方差匹配
本文提出了一种新的目标跟踪公式。对图像区域的二阶统计量进行建模,并在变分水平集框架下进行协方差匹配。具体而言,采用协方差矩阵作为基于偏微分方程(PDE)的轮廓跟踪的可视化对象表示。由于协方差矩阵通常位于非欧几里德流形上,因此欧几里德距离不适用于度量协方差矩阵之间的相似度,故采用对数-欧几里德微积分作为协方差距离度量。通过最小化候选目标区域与给定模板之间的距离度量,最大化背景区域与模板之间的距离度量,建立了一种新的图像能量函数。然后根据变分方法推导相应的梯度流,实现基于pde的视觉跟踪。在合成视频序列和真实视频序列上的实验证明了该方法的有效性。
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