Remote Sensing Classification Under Deep Learning: A Review

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Abstract

The best machine learning strategy is deep neural learning. Regardless of information wellsprings, current classification and remote sensing strategies are quickly presented. At that point, basic databases and run deep neural learning models are introduced, with deep belief network, convolutional neural network and stacked autoencoder. Besides, ideal design of such strategies for deep neural learning is abridged by Kappa coefficient and general exactness At long last, the present work along with future scope of satellite sensing deep neural learning classification has been provided. The present work explores the deep neural learning, which is guaranteed to be an overwhelming strategy for sensing classification of remote sensing.

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Sinwar, D., Sharma, M. K., & Verma, H. (2020). Remote Sensing Classification Under Deep Learning: A Review. In Smart Innovation, Systems and Technologies (Vol. 141, pp. 813–823). Springer. https://doi.org/10.1007/978-981-13-8406-6_76

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