Orthogonal moments are beneficial tools for analyzing and representing images and objects. Different hybrid forms, which are first and second levels of combination, have been created from the Tchebichef and Krawtchouk polynomials. In this study, all the hybrid forms, including the first and second levels of combination that satisfy the localization and energy compaction (EC) properties, are investigated. A new hybrid polynomial termed as squared Tchebichef-Krawtchouk polynomial (STKP) is also proposed. The mathematical and theoretical expressions of STKP are introduced, and the performance of the STKP is evaluated and compared with other hybrid forms. Results show that the STKP outperforms the existing hybrid polynomials in terms of EC and ...
This paper introduces a new set of moment functions based on Chebyshev polynomials which are orthogo...
This paper presents a new set of bivariate discrete orthogonal moments which are based on bivariate ...
In this paper we analyze some shape-based image retrieval methods which use different types of geome...
In recent years, discrete orthogonal moments have attracted the attention of the scientific communit...
Image feature representation techniques using orthogonal moment functions have been used in many app...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
International audienceIn this paper, we introduce a set of discrete orthogonal functions known as du...
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
Discrete orthogonal moments are powerful tools for characterizing image shape features for applicati...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
International audienceDiscrete orthogonal moments such as Tchebichef moments have been successfully ...
Moment functions based on Tchebichef polynomials have been used recently in pattern recognition appl...
International audienceDiscrete orthogonal moments have been recently introduced in the field of imag...
Abstract − Several pattern recognition applications use orthogonal moments to capture independent sh...
This paper introduces a new set of moment functions based on Chebyshev polynomials which are orthogo...
This paper presents a new set of bivariate discrete orthogonal moments which are based on bivariate ...
In this paper we analyze some shape-based image retrieval methods which use different types of geome...
In recent years, discrete orthogonal moments have attracted the attention of the scientific communit...
Image feature representation techniques using orthogonal moment functions have been used in many app...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
International audienceIn this paper, we introduce a set of discrete orthogonal functions known as du...
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
Discrete orthogonal moments are powerful tools for characterizing image shape features for applicati...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
International audienceDiscrete orthogonal moments such as Tchebichef moments have been successfully ...
Moment functions based on Tchebichef polynomials have been used recently in pattern recognition appl...
International audienceDiscrete orthogonal moments have been recently introduced in the field of imag...
Abstract − Several pattern recognition applications use orthogonal moments to capture independent sh...
This paper introduces a new set of moment functions based on Chebyshev polynomials which are orthogo...
This paper presents a new set of bivariate discrete orthogonal moments which are based on bivariate ...
In this paper we analyze some shape-based image retrieval methods which use different types of geome...