Texture as a measure of spatial features has been useful as supplementary information to improve image classification in many areas of research fields. This study focuses on assessing the ability of different textural vectors and their combinations to aid spectral features in the classification of silicate rocks. Texture images were calculated from Landsat 8 imagery using a fractal dimension method. Different combinations of texture images, fused with all seven spectral bands, were examined using the Jeffries–Matusita (J–M) distance to select the optimal input feature vectors for image classification. Then, a support vector machine (SVM) fusing textural and spectral features was applied for image classification. The results showed that the ...
This research work presents a supervised classification framework for hyperspectral data that takes ...
In this paper, we proposed a method to classify each type of natural rock texture. Our goal is to cl...
Mine operations in the future will require automatic rock characterization at many different stages,...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Texture analysis and classification are usual tasks in pattern recognition. Rock texture is a demand...
This paper presents a study on rock texture image classification using support vector machines (and ...
Gray Level Co-Occurrence Matrix (GLCM), as a measure of spatial features has been used as supplement...
The classification of natural images is an essential task in current computer vision and pattern rec...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
The classification of natural images is an useful task in current computer vision, pattern recogniti...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
We present an optimal integration of multi-sensor datasets, including Advanced Spaceborne Thermal an...
This work develops a mathematical method to extract relevant information about natural rock textures...
International audienceRock recognition is extremely difficult because of the heterogeneity of rock p...
The potential of Terrestrial Laser Scanner imaging (TLS) as a tool to map chert, an amorphous variet...
This research work presents a supervised classification framework for hyperspectral data that takes ...
In this paper, we proposed a method to classify each type of natural rock texture. Our goal is to cl...
Mine operations in the future will require automatic rock characterization at many different stages,...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Texture analysis and classification are usual tasks in pattern recognition. Rock texture is a demand...
This paper presents a study on rock texture image classification using support vector machines (and ...
Gray Level Co-Occurrence Matrix (GLCM), as a measure of spatial features has been used as supplement...
The classification of natural images is an essential task in current computer vision and pattern rec...
Remote sensing data proved to be a valuable resource in a variety of earth science applications. Usi...
The classification of natural images is an useful task in current computer vision, pattern recogniti...
The mineral ore potential of many mountainous regions of the world, like the Kurdistan region of Ira...
We present an optimal integration of multi-sensor datasets, including Advanced Spaceborne Thermal an...
This work develops a mathematical method to extract relevant information about natural rock textures...
International audienceRock recognition is extremely difficult because of the heterogeneity of rock p...
The potential of Terrestrial Laser Scanner imaging (TLS) as a tool to map chert, an amorphous variet...
This research work presents a supervised classification framework for hyperspectral data that takes ...
In this paper, we proposed a method to classify each type of natural rock texture. Our goal is to cl...
Mine operations in the future will require automatic rock characterization at many different stages,...