We present a classification method based on the discrete cosine transform (DCT) coefficients of texture image. Since the DCT works on gray level images, the color scheme of each image is transformed into gray levels. For classifying the images with DCT, we used two popular soft computing techniques, namely neurocomputing and neuro-fuzzy computing. We used a feedforward neural network trained by backpropagation algorithm and an evolving fuzzy neural network to classify the textures. The soft computing models were trained using 80% of the texture data and remaining was used for testing and validation purposes. A performance comparison was made among the soft computing models for the texture classification problem. We also analyzed the effects...
This study presents a framework for gray texture classification based on the fusion of wavelet and c...
The authors introduce a novel descriptor for texture classification, namely the fuzzy pattern spectr...
This paper presents backpropagation neural networks that utilize texture information to accurately c...
Classification of texture patterns is one of the most important problems in pattern recognition. In ...
Classification of texture pattern is one of the most important problems in pattern recognition. In t...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
In this paper we present a neuro-fuzzy approach for classification of image pixels into three classe...
Texture provides an important cue for many computer vision applications, and texture image classific...
Texture is generally recognized as fundamental to perceptions. There is no precise definition or cha...
About the book: Texture analysis is an important generic research area of machine vision. The potent...
This paper describes an approach to classification of textured grayscale images using a technique ba...
This paper describes an approach to classification of textured grayscale images using a technique ba...
In this paper texture classification is studied based on the fractal dimension (FD) of filtered vers...
Abstract. This article presents a hybrid approach for texture-based image classification using the g...
This Master's thesis has concerned the segmentation and classification of background textures in ima...
This study presents a framework for gray texture classification based on the fusion of wavelet and c...
The authors introduce a novel descriptor for texture classification, namely the fuzzy pattern spectr...
This paper presents backpropagation neural networks that utilize texture information to accurately c...
Classification of texture patterns is one of the most important problems in pattern recognition. In ...
Classification of texture pattern is one of the most important problems in pattern recognition. In t...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
In this paper we present a neuro-fuzzy approach for classification of image pixels into three classe...
Texture provides an important cue for many computer vision applications, and texture image classific...
Texture is generally recognized as fundamental to perceptions. There is no precise definition or cha...
About the book: Texture analysis is an important generic research area of machine vision. The potent...
This paper describes an approach to classification of textured grayscale images using a technique ba...
This paper describes an approach to classification of textured grayscale images using a technique ba...
In this paper texture classification is studied based on the fractal dimension (FD) of filtered vers...
Abstract. This article presents a hybrid approach for texture-based image classification using the g...
This Master's thesis has concerned the segmentation and classification of background textures in ima...
This study presents a framework for gray texture classification based on the fusion of wavelet and c...
The authors introduce a novel descriptor for texture classification, namely the fuzzy pattern spectr...
This paper presents backpropagation neural networks that utilize texture information to accurately c...