Abstract

Focused on the issue that conventional remote sensing image classification methods have run into the bottlenecks in accuracy, a new remote sensing image classification method inspired by deep learning is proposed, which is based on Stacked Denoising Autoencoder. First, the deep network model is built through the stacked layers of Denoising Autoencoder. Then, with noised input, the unsupervised Greedy layer-wise training algorithm is used to train each layer in turn for more robust expressing, characteristics are obtained in supervised learning by Back Propagation (BP) neural network, and the whole network is optimized by error back propagation. Finally, Gaofen-1 satellite (GF-1) remote sensing data are used for evaluation, and the total accuracy and kappa accuracy reach 95.7% and 0.955, respectively, which are higher than that of the Support Vector Machine and Back Propagation neural network. The experiment results show that the proposed method can effectively improve the accuracy of remote sensing image classification.

Highlights

  • IntroductionRemote sensing image classification has always been a hot spot in remote sensing technology

  • Remote sensing image classification has always been a hot spot in remote sensing technology.It refers to the process of assigning each pixel in the remote sensing image to a semantic interpretation of the land cover or land use category

  • A remote sensing image classification method based on SDAE is proposed

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Summary

Introduction

Remote sensing image classification has always been a hot spot in remote sensing technology. It refers to the process of assigning each pixel in the remote sensing image to a semantic interpretation of the land cover or land use category. With the rapid increase in the amount of remote sensing image data and the gradual improvement in resolution, remote sensing image classification technology plays an increasingly important role in urban planning, environmental protection, resource management, mapping, and other fields. Remote sensing image classification is mainly divided into parametric and nonparametric methods [1]. Since parametric classifier requires knowing the distribution of data in advance, this is often difficult to achieve in remote sensing images. All of the above methods, require analysis and extraction of a manually designed feature, and the overall classification accuracy is to be improved

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