This article discusses how computational intelligence techniques are applied to fuse spectral images into a higher level image of land cover distribution for remote sensing, specifically for satellite image classification. We compare a fuzzy-inference method with two other computational intelligence methods, decision trees and neural networks, using a case study of land cover classification from satellite images. Further, an unsupervised approach based on k-means clustering has been also taken into consideration for comparison. The fuzzy-inference method includes training the classifier with a fuzzy-fusion technique and then performing land cover classification using reinforcement aggregation operators. To assess the robustness of the four ...
The opportunity to use high spatial resolution satellite images allows remote sensing scientists to ...
Land-cover and land-use classification generates categories of terrestrial features, such as water o...
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...
In the context of land-cover classification with multispectral satellite data several unsupervised c...
Several computational intelligence components, namely neural networks, fuzzy sets and genetic algori...
Several computational intelligence components, namely neural networks (NNs), fuzzy sets, and genetic...
Fully-fuzzy classification approaches have attracted increasing interest recently. These approaches ...
The number and structure of land cover classes separatable in a region on the basis of multi-spectra...
The main objective of this study is to find out the importance of machine vision approach for the cl...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
Satellite image classification is crucial in various applications such as urban planning, environmen...
The opportunity to use high spatial resolution satellite images allows remote sensing scientists to ...
Land-cover and land-use classification generates categories of terrestrial features, such as water o...
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...
In the context of land-cover classification with multispectral satellite data several unsupervised c...
Several computational intelligence components, namely neural networks, fuzzy sets and genetic algori...
Several computational intelligence components, namely neural networks (NNs), fuzzy sets, and genetic...
Fully-fuzzy classification approaches have attracted increasing interest recently. These approaches ...
The number and structure of land cover classes separatable in a region on the basis of multi-spectra...
The main objective of this study is to find out the importance of machine vision approach for the cl...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
This article aims to apply machine learning algorithms to the supervised classification of optical s...
Satellite image classification is crucial in various applications such as urban planning, environmen...
The opportunity to use high spatial resolution satellite images allows remote sensing scientists to ...
Land-cover and land-use classification generates categories of terrestrial features, such as water o...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...