Abstract − Several pattern recognition applications use orthogonal moments to capture independent shape characteristics of an image, with minimum amount of information redundancy in a feature set. Legendre, Zernike, and Pseudo-Zernike moments are examples of such orthogonal feature descriptors. An image can also be reconstructed from a sufficiently large number of orthogonal moments. Discrete orthogonal moments provide a more accurate description of image features by evaluating the moment components directly in the image coordinate space. This paper examines some of the problems associated with the computation of large order Tchebichef moments, and proposes an orthonormal version to improve the quality of reconstructed images
A multi-distorted invariant orthogonal moments, Jacobi-Fourier Moments (JFM), were proposed. The int...
Various types of moments have been used to recognize image patterns in a number of applications. The...
Zernike moments are complex moments with the orthogonal Zernike polynomials as kernel function, comp...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
Image feature representation techniques using orthogonal moment functions have been used in many app...
This paper introduces a new set of moment functions based on Chebyshev polynomials which are orthogo...
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
A set of orthonormal polynomials is proposed for image reconstruction from projection data. The rela...
Existing works on orthogonal moments are mainly focused on optimizing classical orthogonal Cartesian...
International audienceIn this paper, we introduce a set of discrete orthogonal functions known as du...
Statistical moments can offer a powerful means for object description in object sequences. Moments u...
Discrete orthogonal moments are powerful tools for characterizing image shape features for applicati...
Orthogonal moments play an important role in image analysis and other similar applications. However,...
A multi-distorted invariant orthogonal moments, Jacobi-Fourier Moments (JFM), were proposed. The int...
Various types of moments have been used to recognize image patterns in a number of applications. The...
Zernike moments are complex moments with the orthogonal Zernike polynomials as kernel function, comp...
Several pattern recognition applications use orthogonal moments to capture independent shape charac...
Abstract—Discrete orthogonal moments have several computa-tional advantages over continuous moments....
Discrete orthogonal moments have several computational advantages over continuous moments. However w...
Image feature representation techniques using orthogonal moment functions have been used in many app...
This paper introduces a new set of moment functions based on Chebyshev polynomials which are orthogo...
International audienceA new set, to our knowledge, of orthogonal moment functions for describing ima...
A set of orthonormal polynomials is proposed for image reconstruction from projection data. The rela...
Existing works on orthogonal moments are mainly focused on optimizing classical orthogonal Cartesian...
International audienceIn this paper, we introduce a set of discrete orthogonal functions known as du...
Statistical moments can offer a powerful means for object description in object sequences. Moments u...
Discrete orthogonal moments are powerful tools for characterizing image shape features for applicati...
Orthogonal moments play an important role in image analysis and other similar applications. However,...
A multi-distorted invariant orthogonal moments, Jacobi-Fourier Moments (JFM), were proposed. The int...
Various types of moments have been used to recognize image patterns in a number of applications. The...
Zernike moments are complex moments with the orthogonal Zernike polynomials as kernel function, comp...