A study has been carried out of 15 years of published peer-reviewed experiments on satellite image classification. The aim of the study was to assess the degree of progress being made in thematic mapping through developments in classification algorithms and also in systems approaches such as postclassification analysis, multiclassifier integration, and data fusion. The results of over 500 reported classification experiments were quantitatively analyzed. This involved examination of relationships between classification accuracy and date of publication, as well as between accuracy and various experimental parameters such as number of classes, size of feature vector, resolution of satellite data, and test area. Comparisons were also made betwe...
In this thesis, a detailed review is performed on some existed unsupervised classification algorithm...
Supervised classification of satellite imagery largely removes the user from the information extract...
This paper evaluates the classification accuracy of three neural network classifiers on a satellite ...
Satellite image classification process involves grouping the image pixel values into meaningful cate...
Abstract: Image classification entails the important part of digital image and has been very essenti...
This paper is of classification of remote sensed Multispectral satellite images using supervised and...
The classification of historical maps has become a crucial task in today's rapidly changing landscap...
The subject matter of the article is the methods of morphological spatial filtering of images in pse...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
Remote Sensing is a multi-disciplinary technique for image acqui-sition and measurement of informati...
A new method for satellite data classification is presented. The method is based on symbolic machine...
Improved sensor characteristics are generally assumed to increase the potential accuracy of image cl...
In this article the effectiveness of some recently developed genetic algorithm-based pattern classif...
ABSTRACT An overall performance comparison was delineated in this paper between the two most common...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
In this thesis, a detailed review is performed on some existed unsupervised classification algorithm...
Supervised classification of satellite imagery largely removes the user from the information extract...
This paper evaluates the classification accuracy of three neural network classifiers on a satellite ...
Satellite image classification process involves grouping the image pixel values into meaningful cate...
Abstract: Image classification entails the important part of digital image and has been very essenti...
This paper is of classification of remote sensed Multispectral satellite images using supervised and...
The classification of historical maps has become a crucial task in today's rapidly changing landscap...
The subject matter of the article is the methods of morphological spatial filtering of images in pse...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
Remote Sensing is a multi-disciplinary technique for image acqui-sition and measurement of informati...
A new method for satellite data classification is presented. The method is based on symbolic machine...
Improved sensor characteristics are generally assumed to increase the potential accuracy of image cl...
In this article the effectiveness of some recently developed genetic algorithm-based pattern classif...
ABSTRACT An overall performance comparison was delineated in this paper between the two most common...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
In this thesis, a detailed review is performed on some existed unsupervised classification algorithm...
Supervised classification of satellite imagery largely removes the user from the information extract...
This paper evaluates the classification accuracy of three neural network classifiers on a satellite ...