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遥感学报 1999
Landcover Classification of Remote Sensing Imagery Using Self organizing Neur al Network
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Abstract:
In this peaper,the implement and comparison of different self-organizing learning algorithm in landcover clas- sification of Landsat TM imagery it is found that with the combination of unsupervised and supervised learning method and the nearest neighbour principle these algorithms have no significant difference in classification accuracy .The study result shows that the self-organizing network is an another method to classify the landcover type in remote sensing imagery by combining the unsupervised and supervised learning phase with the nearest neighbour principle .Because of the sim- plicitv of the Simple Competivite Learning the self-organizing network can use the Simple Competivite Learning algorithm in remotely sensed data classification.