Open Access
Remote Sensing Image Classification using Back Propogation
Shah Kehul,More S A +1 more
- 22 Dec 2014
- Iss: 2, pp 9-11
TL;DR: The aim is to develop an artificial neural network based on classification method consists of segmentation and classification performed with back propagation neural network which provide accuracy and satisfactory result compare to the other method.
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Abstract: The resolution of remote sensing images increase every day .Most of the existing methods is used the same method for years. The existing method does not provide satisfactory result. The aim is to develop an artificial neural network based on classification method consists of segmentation and classification .Segmentation followed by K-Means method and then classification performed with back propagation neural network which provide accuracy and satisfactory result compare to the other method. General Terms Artificial neural network, Image Classification
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References
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