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A fast multi-scale covariance descriptor for object re-identification

机译:用于对象重新识别的快速多尺度协方差描述符

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摘要

In many surveillance systems, there is a need to determine if a given object (person, group of persons, vehicle,...) has already been observed over a network of cameras. It is the object re-identification problem. Solving this problem involves matching observation of objects across disjoint camera views. Uncal-ibrated fixed or mobile cameras with non-overlapping field of view generate uncontrolled variation in view point, background and lighting. In such situations, a robust and invariant image description is required. A multi-scale covariance image descriptor and a quadtree based scheme are proposed to describe any object of interest. We describe a fast method for computation of multi-scale covariance descriptor. The descriptor is evaluated in person re-identification application using the VIPeR dataset. We show that the proposed multi-scale approach outperforms existing mono-scale image description methods.
机译:在许多监视系统中,需要确定是否已经通过摄像机网络观察到给定的对象(人员,人群,车辆等)。这是对象重新识别问题。解决此问题涉及在不相交的摄影机视图之间匹配观察对象。具有非重叠视场的未校准固定或移动相机会在视点,背景和照明方面产生不受控制的变化。在这种情况下,需要强大而不变的图像描述。提出了多尺度协方差图像描述符和基于四叉树的方案来描述任何感兴趣的对象。我们描述了一种用于计算多尺度协方差描述符的快速方法。使用VIPeR数据集在人员重新识别应用程序中对描述符进行评估。我们表明,提出的多尺度方法优于现有的单尺度图像描述方法。

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