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  Classification of remotely-sensed image data using artificial neural networks
 
 
Title: Classification of remotely-sensed image data using artificial neural networks
Author: Liu, Z. K.
Xiao, J. Y.
Appeared in: International journal of remote sensing
Paging: Volume 12 (1991) nr. 11 pages 2433-2438
Year: 1991-11-01
Contents: . Artificial neural networks have been used recently for speech and character recognition. Their application for the classification of remotely-sensed images is reported in this Letter. Remotely sensed image data are usually large in size and spectral overlaps among classes of ground objects are common. This results in low convergence performance of the Back-Propagation Algorithm in a neural network classifier. A Blocked Back-Propagation (BB-P) algorithm was proposed arid described in this Letter. It improved convergence performance and classification accuracy.
Publisher: Taylor & Francis
Source file: Elektronische Wetenschappelijke Tijdschriften
 
 

                             Details for article 2 of 28 found articles
 
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