In this paper, we proposed a method to classify each type of natural rock texture. Our goal is to classify 26 classes of rock textures. First, we extract five features of each class by using principle component analysis combining with the use of applied spatial frequency measurement. Next, the effective node number of neural network was tested. We used the most effective neural network in classification process. The results from this system yield quite high in recognition rate. It is shown that high recognition rate can be achieved in separation of 26 stone classes
Proper quality planning of limestone raw materials is an essential job of maintaining desired feed i...
Texture classification is widely used in understanding the visual patterns and has wide range of app...
As deep learning (DL) gains popularity for its ability to make accurate predictions in various field...
This work develops a mathematical method to extract relevant information about natural rock textures...
Texture analysis and classification are usual tasks in pattern recognition. Rock texture is a demand...
The classification of natural images is an essential task in current computer vision and pattern rec...
The classification of natural images is an useful task in current computer vision, pattern recogniti...
This paper presents a study on rock texture image classification using support vector machines (and ...
The classification of natural images is an essential task in computer vision and pattern recognition...
International audienceRock recognition is extremely difficult because of the heterogeneity of rock p...
In the automatic classification of colored natural textures, the idea of proposing methods that refl...
This project has been proposed by the Nijst company, located in Belgium. This company works with na...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Abstract. An industrial rock classification system is constructed and studied. The local texture inf...
Electrical borehole wall images represent grey-level-coded micro-resistivity measurements at the bor...
Proper quality planning of limestone raw materials is an essential job of maintaining desired feed i...
Texture classification is widely used in understanding the visual patterns and has wide range of app...
As deep learning (DL) gains popularity for its ability to make accurate predictions in various field...
This work develops a mathematical method to extract relevant information about natural rock textures...
Texture analysis and classification are usual tasks in pattern recognition. Rock texture is a demand...
The classification of natural images is an essential task in current computer vision and pattern rec...
The classification of natural images is an useful task in current computer vision, pattern recogniti...
This paper presents a study on rock texture image classification using support vector machines (and ...
The classification of natural images is an essential task in computer vision and pattern recognition...
International audienceRock recognition is extremely difficult because of the heterogeneity of rock p...
In the automatic classification of colored natural textures, the idea of proposing methods that refl...
This project has been proposed by the Nijst company, located in Belgium. This company works with na...
Texture as a measure of spatial features has been useful as supplementary information to improve ima...
Abstract. An industrial rock classification system is constructed and studied. The local texture inf...
Electrical borehole wall images represent grey-level-coded micro-resistivity measurements at the bor...
Proper quality planning of limestone raw materials is an essential job of maintaining desired feed i...
Texture classification is widely used in understanding the visual patterns and has wide range of app...
As deep learning (DL) gains popularity for its ability to make accurate predictions in various field...