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首页> 外文期刊>Journal of electronic imaging >Image classification using a new set of separable two-dimensional discrete orthogonal invariant moments
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Image classification using a new set of separable two-dimensional discrete orthogonal invariant moments

机译:使用一组新的可分离的二维离散正交不变矩进行图像分类

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摘要

We propose a new set of bivariate discrete orthogonal polynomials, which are the product of Charlier's discrete orthogonal polynomials with one variable by Tchebichef, Krawtchouk, and Hahn discrete orthogonal polynomials with one variable. This set of bivariate discrete orthogonal polynomials is used to define several new types of discrete orthogonal moments such as Charlier-Tchebichef moments (CTM), Charlier-Krawtchouk moments (CKM), and Charlier-Hahn moments (CHM). We also present an approach for fast computation of CTM, CKM, and CHM discrete orthogonal moments using the image block representation for binary images and image slice representation for grayscale images. A set of Charlier-Tchebichef invariant moments, Charlier-Krawtchouk invariant moments, and Charlier-Hahn invariant moments is also presented. These invariant moments are derived algebraically from the geometric invariant moments, and their computation is accelerated using an image representation scheme. The presented algorithms are tested in several well-known computer vision datasets including image reconstruction, computational time, moment's invariability, and classification of objects. The performance of these invariant moments used as pattern features for a pattern classification is compared with Hu, Legendre, Tchebichef-Krawtchouk, Tchebichef-Hahn, and Krawtchouk-Hahn invariant moments.
机译:我们提出了一组新的双变量离散正交多项式,它们是具有一个变量的Tchebichef,Krawtchouk和具有一个变量的Hahn离散正交多项式的Charlier离散正交多项式的乘积。这组二元离散正交多项式用于定义几种新型的离散正交矩,例如Charlier-Tchebichef矩(CTM),Charlier-Krawtchouk矩(CKM)和Charlier-Hahn矩(CHM)。我们还提出了一种使用二进制图像的图像块表示和灰度图像的图像切片表示来快速计算CTM,CKM和CHM离散正交矩的方法。还介绍了一组Charlier-Tchebichef不变矩,Charlier-Krawtchouk不变矩和Charlier-Hahn不变矩。这些不变矩是从几何不变矩代数导出的,并且它们的计算使用图像表示方案来加速。所提出的算法已在多个知名的计算机视觉数据集中进行了测试,包括图像重建,计算时间,矩不变性和对象分类。将这些不变矩的性能用作模式分类的特征,并将其与Hu,Legendre,Tchebichef-Krawtchouk,Tchebichef-Hahn和Krawtchouk-Hahn不变矩进行比较。

著录项

  • 来源
    《Journal of electronic imaging》 |2014年第1期|378-392|共15页
  • 作者单位

    Sidi Mohamed Ben Abdellah University, CED-ST, LESSI, Faculty of Sciences Dhar El-Mehraz, BP 1796 Fez-Atlas 30003, Fez, Morocco;

    Sidi Mohamed Ben Abdellah University, CED-ST, LESSI, Faculty of Sciences Dhar El-Mehraz, BP 1796 Fez-Atlas 30003, Fez, Morocco;

    Sidi Mohamed Ben Abdellah University, CED-ST, LESSI, Faculty of Sciences Dhar El-Mehraz, BP 1796 Fez-Atlas 30003, Fez, Morocco;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    bivariate; invariant moments; image reconstruction; pattern recognition; classification;

    机译:双变量不变的时刻;影像重建;模式识别;分类;

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