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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Real-time tracking of multiple objects in space-variant vision based on magnocellular visual pathway
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Real-time tracking of multiple objects in space-variant vision based on magnocellular visual pathway

机译:基于宏细胞视觉通路的空间变异视觉中的多个对象的实时跟踪

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摘要

In this paper, we propose a space-variant image representation model based on properties of magnocellular visual pathway, which perform motion analysis, in human retina. Then, we present an algorithm for the tracking of multiple objects in the proposed space-variant model. The proposed space-variant model has two effective image representations for object recognition and motion analysis, respectively. Each image representation is based on properties of two types of ganglion cell, which are the beginning of two basic visual pathways one is parvocellular and the other is magnocellular. Through this model, we can get the efficient data reduction capability with no great loss of important information. And, the proposed multiple objects tracking method is restricted in space-variant image, Typically. an object-tracking algorithm consists of several processes such as detection, prediction. matching, and updating. In particular, the matching process plays an important role in multiple objects tracking. In traditional vision, the matching process is simple when the target objects are rigid. In space-variant vision, however, it is very complicated although the target is rigid. because there may be deformation of an object region in the space-variant coordinate system when the target moves to another position. Therefore we propose a deformation formula in order to solve the matching problem in space-variant vision. By solving this problem, we can efficiently implement multiple objects tracking in space-variant vision. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 16]
机译:在本文中,我们提出了一种基于大细胞视觉通路特性的空间变异图像表示模型,该模型在人体视网膜中执行运动分析。然后,我们提出了一种在所提出的空间变量模型中跟踪多个对象的算法。提出的空间变量模型分别具有两个有效的图像表示形式,用于对象识别和运动分析。每个图像表示均基于两种类型的神经节细胞的属性,这是两种基本视觉通路的开始,一种是细小细胞,另一种是粗细胞。通过此模型,我们可以获得有效的数据缩减功能,而不会丢失重要信息。并且,所提出的多目标跟踪方法通常局限于空间变化图像中。对象跟踪算法由多个过程组成,例如检测,预测。匹配和更新。特别是,匹配过程在多对象跟踪中起着重要的作用。在传统视觉中,当目标对象是刚性的时,匹配过程很简单。然而,在空间可变视觉中,尽管目标是刚性的,但它非常复杂。因为当目标移动到另一个位置时,空间变量坐标系中的对象区域可能会变形。因此,我们提出一种变形公式,以解决空间变异视觉中的匹配问题。通过解决此问题,我们可以有效地实现空间可变视觉中的多个对象跟踪。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:16]

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