Radial Meixner Moment Invariants for 2D and 3D Image Recognition


Cite item

Full Text

Open Access Open Access
Restricted Access Access granted
Restricted Access Subscription Access

Abstract

In this paper, we propose a new set of 2D and 3D rotation invariants based on orthogonal radial Meixner moments. We also present a theoretical mathematics to derive them. Hence, this paper introduces in the first case a new 2D radial Meixner moments based on polar representation of an object by a one-dimensional orthogonal discrete Meixner polynomials and a circular function. In the second case, we present a new 3D radial Meixner moments using a spherical representation of volumetric image by a one-dimensional orthogonal discrete Meixner polynomials and a spherical function. Further 2D and 3D rotational invariants are derived from the proposed 2D and 3D radial Meixner moments respectively. In order to prove the proposed approach, three issues are resolved mainly image reconstruction, rotational invariance and pattern recognition. The result of experiments prove that the Meixner moments have done better than the Krawtchouk moments with and without nose. Simultaneously, the reconstructed volumetric image converges quickly to the original image using 2D and 3D radial Meixner moments and the test images are clearly recognized from a set of images that are available in a PSB database.

About the authors

M. El Mallahi

Sidi Mohamed Ben Abdellah University

Author for correspondence.
Email: mostafa.elmallahi@usmba.ac.ma
Morocco, Fez

A. Zouhri

Sidi Mohamed Ben Abdellah University

Email: mostafa.elmallahi@usmba.ac.ma
Morocco, Fez

H. Qjidaa

Sidi Mohamed Ben Abdellah University

Email: mostafa.elmallahi@usmba.ac.ma
Morocco, Fez

Supplementary files

Supplementary Files
Action
1. JATS XML

Copyright (c) 2018 Pleiades Publishing, Ltd.