DocumentCode :
2674807
Title :
A neural architecture for the classification of remote sensing imagery with advanced learning algorithms
Author :
Gonçalves, Márcio L. ; De Netto, Márcio L Andrade ; Zullo, J.
Author_Institution :
PUC.MINAS, Brazil
fYear :
1998
fDate :
31 Aug-2 Sep 1998
Firstpage :
577
Lastpage :
586
Abstract :
This work presents an artificial neural networks based architecture for the classification of remote sensing (RS) multispectral imagery. The architecture consists of two processing modules: an image feature extraction module using Kohonen self-organizing map and a classification module using multilayer perceptron network. The architecture was developed aiming at two specific goals: to exploit the advantages of unsupervised learning for feature extraction, and the testing of techniques to increase the learning algorithm´s performance concerning training time. To test the applicability of this work, the architecture was applied to the classification of a LANDSAT/TM image segment from a pre-selected testing area and its performance was compared with that of a maximum likelihood classifier, conventionally used for RS multispectral images classification
Keywords :
feature extraction; image classification; multilayer perceptrons; neural net architecture; remote sensing; self-organising feature maps; unsupervised learning; Kohonen self-organizing map; LANDSAT/TM image; feature extraction; image classification; multilayer perceptron; multispectral images; neural architecture; remote sensing; unsupervised learning; Artificial neural networks; Feature extraction; Image classification; Image segmentation; Multispectral imaging; Remote sensing; Satellites; Statistical analysis; Testing; Unsupervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks for Signal Processing VIII, 1998. Proceedings of the 1998 IEEE Signal Processing Society Workshop
Conference_Location :
Cambridge
ISSN :
1089-3555
Print_ISBN :
0-7803-5060-X
Type :
conf
DOI :
10.1109/NNSP.1998.710689
Filename :
710689
Link To Document :
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