The Orthogonal Variant Moments (OVM) are proposed in this paper as a way of characterization of any function or signal in general. This approach provides many benefits over the traditional characterization by invariant moments when it is applied to images, time series, wave recognition and information extraction, as it provides relevant information. Our approach to the theory of visual perception is based on the study of the low level vision system by OVM while most of the works on this field use invariant moments. The OVM is shown to be a powerful tool to extract general information of any signal including ND-signals. An application of this method to computer vision proves the efficiency of this approach
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
This paper proposes a novel full-reference quality assessment (QA) metric that automatically assesse...
Image feature representation techniques using orthogonal moment functions have been used in many app...
International audienceThe several moment families have been reviewed in a first paper [1]. A classif...
A multi-distorted invariant orthogonal moments, Jacobi-Fourier Moments (JFM), were proposed. The int...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
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...
International audienceThis first paper was aimed at providing the basic formulations of moments, a c...
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
This paper presents the mathematical framework of discrete orthogonal moment functions based on Tche...
The selection of a good feature extraction technique is very important in any classification problem...
Various types of moments have been used to recognize image patterns in a number of applications. The...
Orthogonal moments play an important role in image analysis and other similar applications. However,...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
This paper proposes a novel full-reference quality assessment (QA) metric that automatically assesse...
Image feature representation techniques using orthogonal moment functions have been used in many app...
International audienceThe several moment families have been reviewed in a first paper [1]. A classif...
A multi-distorted invariant orthogonal moments, Jacobi-Fourier Moments (JFM), were proposed. The int...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
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...
International audienceThis first paper was aimed at providing the basic formulations of moments, a c...
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
This paper presents the mathematical framework of discrete orthogonal moment functions based on Tche...
The selection of a good feature extraction technique is very important in any classification problem...
Various types of moments have been used to recognize image patterns in a number of applications. The...
Orthogonal moments play an important role in image analysis and other similar applications. However,...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
This paper proposes a novel full-reference quality assessment (QA) metric that automatically assesse...