Feature extraction is an important processing procedure in texture classification. For feature extraction in the wavelet domain, the energies of subbands are usually extracted for texture classification. However, the energy of one subband is just a specific feature. In this paper, we propose an efficient feature extraction method for texture classification. In particular, feature vectors are obtained by c-means clustering on the contourlet domain as well as using two conventionally extracted features that represent the dispersion degree of contourlet subband coefficients. The c-means clustering algorithm is initialized via a nonrandom initialization scheme. By investigating these feature vectors, we employ a weighted L-1-distance for compar...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
This paper describes a new texture feature estimation technique for discriminating images of eight d...
This paper proposes a multiscale texture classifer which uses features extracted from both magnitude...
Feature extraction is an important processing procedure in texture classification. For feature extra...
In this paper, we propose a novel texture classification method based on feature extraction through ...
In this paper, we propose a novel texture classification method based on feature extraction through ...
The contourlet transform was recently developed to overcome the limitations of the wavelet transform...
This paper addresses the issue of selecting features from a given wavelet packet subband decompositi...
Statistical modeling of wavelet subbands has frequently been used for image recognition and retrieva...
This paper addresses the issue of selecting features from a given wavelet packet subband decompositi...
© 2013 IEEE. Statistical modeling of wavelet subbands has frequently been used for image recognition...
Wavelet transform provides several important characteristics which can be used in a texture analysis...
In this letter, we propose an efficient one-nearest-neighbor classifier of texture via the contrast ...
In this paper, we propose a novel texture classification method based on product Bernoulli distribut...
In information processing using Wavelet transform, wavelet subband coefficients are often modelled b...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
This paper describes a new texture feature estimation technique for discriminating images of eight d...
This paper proposes a multiscale texture classifer which uses features extracted from both magnitude...
Feature extraction is an important processing procedure in texture classification. For feature extra...
In this paper, we propose a novel texture classification method based on feature extraction through ...
In this paper, we propose a novel texture classification method based on feature extraction through ...
The contourlet transform was recently developed to overcome the limitations of the wavelet transform...
This paper addresses the issue of selecting features from a given wavelet packet subband decompositi...
Statistical modeling of wavelet subbands has frequently been used for image recognition and retrieva...
This paper addresses the issue of selecting features from a given wavelet packet subband decompositi...
© 2013 IEEE. Statistical modeling of wavelet subbands has frequently been used for image recognition...
Wavelet transform provides several important characteristics which can be used in a texture analysis...
In this letter, we propose an efficient one-nearest-neighbor classifier of texture via the contrast ...
In this paper, we propose a novel texture classification method based on product Bernoulli distribut...
In information processing using Wavelet transform, wavelet subband coefficients are often modelled b...
In this paper we propose a new feature extractor technique for pattern classification that is based ...
This paper describes a new texture feature estimation technique for discriminating images of eight d...
This paper proposes a multiscale texture classifer which uses features extracted from both magnitude...