In the context of land-cover classification with multispectral satellite data several unsupervised classification (clustering) algorithms are investigated and compared with regard to their ability to reproduce ground data in a complex landscape. Ground data is extended to the entire scene using a supervised neural network classification algorithm. The clustering algorithms examined are K-means, extended K-means, agglomerative hierarchical, fuzzy K-means and fuzzy maximum likelihood. Fuzzy clustering is found to perform best relative to a reference scene obtained with the Landsat Thematic Mapper 5 (TM5) platform
This paper is of classification of remote sensed Multispectral satellite images using supervised and...
This paper presents a method for classifying Landsat Satellite Images. This method is based on the S...
Land cover classification is an essential input to environmental and land use planning.Clustering is...
This paper presents a new application of a data-clustering algorithm in Landsat image classification...
In this thesis, a detailed review is performed on some existed unsupervised classification algorithm...
This article discusses how computational intelligence techniques are applied to fuse spectral images...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This work was partially funded by FCT Strategic Program UID/EEA/00066/203 of the Center of Technolog...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
This work was partially funded by FCT Strategic Program UID/EEA/00066/203 of the Center of Technolog...
This thesis describes an investigation into automatic recognition of satellite imagery from the LAND...
Amongst the multiple benefits and uses of remote sensing, one of the most important applications is ...
This paper is of classification of remote sensed Multispectral satellite images using supervised and...
This paper presents a method for classifying Landsat Satellite Images. This method is based on the S...
Land cover classification is an essential input to environmental and land use planning.Clustering is...
This paper presents a new application of a data-clustering algorithm in Landsat image classification...
In this thesis, a detailed review is performed on some existed unsupervised classification algorithm...
This article discusses how computational intelligence techniques are applied to fuse spectral images...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This work was partially funded by FCT Strategic Program UID/EEA/00066/203 of the Center of Technolog...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
For classifying multispectral satellite images, a multilayer perceptron (MLP) is trained using eithe...
This work was partially funded by FCT Strategic Program UID/EEA/00066/203 of the Center of Technolog...
This thesis describes an investigation into automatic recognition of satellite imagery from the LAND...
Amongst the multiple benefits and uses of remote sensing, one of the most important applications is ...
This paper is of classification of remote sensed Multispectral satellite images using supervised and...
This paper presents a method for classifying Landsat Satellite Images. This method is based on the S...
Land cover classification is an essential input to environmental and land use planning.Clustering is...