The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment
With the rapid growth of satellite technology and the increasing of spatial resolution, hyperspectral imaging sensor is frequently used for research and development as well as in some semi-operational scenarios. The hyperspectral image also offers unique applications such as terrain delimitations,...
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my.utem.eprints.151562015-10-29T08:08:06Z http://eprints.utem.edu.my/id/eprint/15156/ The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment Nanna Suryana, Herman QA76 Computer software With the rapid growth of satellite technology and the increasing of spatial resolution, hyperspectral imaging sensor is frequently used for research and development as well as in some semi-operational scenarios. The hyperspectral image also offers unique applications such as terrain delimitations, object detection, material identification, and atmospheric characterization. However, hyperspectral image systems produce large data sets that are not easily interpretable by visual analysis and therefore require automated processing algorithm. The challenging of pattern recognition associated with hyperspectral images is very complex processing due to the presence of considerable number of mixed pixels. This , paper discusses the development of data mining and pattern recognition algorithm to handle the complexity of hyperspectral remote sensing images in Geographical Information Systems environment. Region growing segmentation and radial basis function algorithms are considered a powerful tool to minimize the mixed pixel classification error. 2007 Conference or Workshop Item PeerReviewed text en http://eprints.utem.edu.my/id/eprint/15156/1/The%20application%20of%20neural%20network%20data%20mining%20algorithm%20into%20mixed%20pixel%20classification%20in%20geographic%20information%20system%20environment214.pdf Nanna Suryana, Herman (2007) The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment. In: Paper Presented at the International Conference on Engineering and ICT (ICEI 2007) , 27 -28 Nov 2007, Hotel Equatorial Melaka.. (Submitted) |
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QA76 Computer software Nanna Suryana, Herman The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
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With the rapid growth of satellite technology and the
increasing of spatial resolution, hyperspectral imaging sensor is frequently used for research and development as well as in some semi-operational scenarios. The hyperspectral image also offers unique applications such as terrain delimitations, object detection, material identification, and atmospheric characterization. However, hyperspectral image systems produce large data sets that are not easily interpretable by visual analysis and therefore require automated processing algorithm. The challenging of pattern recognition associated with hyperspectral images is very complex processing due to
the presence of considerable number of mixed pixels. This
, paper discusses the development of data mining and pattern
recognition algorithm to handle the complexity of
hyperspectral remote sensing images in Geographical
Information Systems environment. Region growing
segmentation and radial basis function algorithms are
considered a powerful tool to minimize the mixed pixel
classification error. |
format |
Conference or Workshop Item |
author |
Nanna Suryana, Herman |
author_facet |
Nanna Suryana, Herman |
author_sort |
Nanna Suryana, Herman |
title |
The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
title_short |
The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
title_full |
The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
title_fullStr |
The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
title_full_unstemmed |
The application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
title_sort |
application of neural network data mining algorithm into mixed pixel classification in geographic information system environment |
publishDate |
2007 |
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http://eprints.utem.edu.my/id/eprint/15156/1/The%20application%20of%20neural%20network%20data%20mining%20algorithm%20into%20mixed%20pixel%20classification%20in%20geographic%20information%20system%20environment214.pdf http://eprints.utem.edu.my/id/eprint/15156/ |
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