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Suliman et al., 2015 - Google Patents

A review on back-propagation neural networks in the application of remote sensing image classification

Suliman et al., 2015

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Document ID
2455230311583383331
Author
Suliman A
Zhang Y
Publication year
Publication venue
Journal of Earth Science and Engineering

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Snippet

ANNs (Artificial neural networks) are used extensively in remote sensing image processing. It has been proven that BPNNs (back-propagation neural networks) have high attainable classification accuracy. However, there is a noticeable variation in the achieved accuracies …
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