基于矩的非包含对象表示与识别技术综述

Richard J Prokop, Anthony P Reeves
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引用次数: 640

摘要

通过使用一组提取的不变特征来描述一个物体,可以以一种独立于尺度、位置和方向的方式从图像中识别物体。已经证明了几种不同的识别技术利用矩来生成这种不变特征。这些技术来源于广泛应用于统计学和力学的一般力矩理论。本文综述了笛卡儿矩的基本理论,并介绍了其在物体识别和图像分析中的应用。讨论了低阶矩的几何性质以及矩空间线性几何变换的定义。最后,对基于矩的目标识别的重要研究进展进行了综述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A survey of moment-based techniques for unoccluded object representation and recognition

The recognition of objects from imagery in a manner that is independent of scale, position and orientation may be achieved by characterizing an object with a set of extracted invariant features. Several different recognition techniques have been demonstrated that utilize moments to generate such invariant features. These techniques are derived from general moment theory which is widely used throughout statistics and mechanics. In this paper, basic Cartesian moment theory is reviewed and its application to object recognition and image analysis is presented. The geometric properties of low-order moments are discussed along with the definition of several moment-space linear geometric transforms. Finally, significant research in moment-based object recognition is reviewed.

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