This paper considers the problem of classification of Magnetic Resonance Images using 2D and 3D texture measures. Joint statistics such as co-occurrence matrices are common for analysing texture in 2D since they are simple and effective to implement. However, the computational complexity can be prohibitive especially in 3D. In this work, we develop a texture classification strategy by a sub-band filtering technique that can be extended to 3D. We further propose a feature selection technique based on the Bhattacharyya distance measure that reduces the number of features required for the classification by selecting a set of discriminant features conditioned on a set training texture samples. We describe and illustrate the methodology by quant...
[[abstract]]A new approach using the statistical feature matrix, which measures the statistical prop...
Abstract. Texture analysis of test object (phantom) images for standardization of in vivo magnetic r...
Texture is one of the most important features used to characterize and interpret mammographic images...
Abstract. This paper considers the problem of classification of Magnetic Resonance Images using 2D a...
This paper considers the problem of texture description and feature selection for the classification...
This paper considers the problem of texture description and feature selection for the classification...
In this paper, a multiresolution volumetric texture segmentation (M-VTS) algorithm is presented. The...
In this paper, a multiresolution volumetric texture segmentation (M-VTS) algorithm is presented. The...
We consider the problem of classifying textured regions. First, several artificial and natural textu...
This paper considers the problem of automatic classification of textured tissues in 3D MRI. More spe...
The term texture refers to patterns arranged in an order in a line or a curve. Textures allow one to...
An algorithm was designed to discriminate tissue types, including pathology, utilizing 3D data sets ...
Introduction: In magnetic resonance (MR) image analysis, noise is one of the main sources of quality...
A method is proposed for three-dimensional (3-D) texture analysis of magnetic resonance imaging brai...
A method is proposed for three-dimensional (3-D) texture analysis of magnetic resonance imaging brai...
[[abstract]]A new approach using the statistical feature matrix, which measures the statistical prop...
Abstract. Texture analysis of test object (phantom) images for standardization of in vivo magnetic r...
Texture is one of the most important features used to characterize and interpret mammographic images...
Abstract. This paper considers the problem of classification of Magnetic Resonance Images using 2D a...
This paper considers the problem of texture description and feature selection for the classification...
This paper considers the problem of texture description and feature selection for the classification...
In this paper, a multiresolution volumetric texture segmentation (M-VTS) algorithm is presented. The...
In this paper, a multiresolution volumetric texture segmentation (M-VTS) algorithm is presented. The...
We consider the problem of classifying textured regions. First, several artificial and natural textu...
This paper considers the problem of automatic classification of textured tissues in 3D MRI. More spe...
The term texture refers to patterns arranged in an order in a line or a curve. Textures allow one to...
An algorithm was designed to discriminate tissue types, including pathology, utilizing 3D data sets ...
Introduction: In magnetic resonance (MR) image analysis, noise is one of the main sources of quality...
A method is proposed for three-dimensional (3-D) texture analysis of magnetic resonance imaging brai...
A method is proposed for three-dimensional (3-D) texture analysis of magnetic resonance imaging brai...
[[abstract]]A new approach using the statistical feature matrix, which measures the statistical prop...
Abstract. Texture analysis of test object (phantom) images for standardization of in vivo magnetic r...
Texture is one of the most important features used to characterize and interpret mammographic images...