Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images
To overcome the difficulty of automating and intelligently classifying the ground features in remote-sensing hyperspectral images, machine learning methods are gradually introduced into the process of remote-sensing imaging. First, the PaviaU, Botswana, and Cuprite hyperspectral datasets are selecte...
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doaj-47cfbe106ff24a67adaa937ffeb011ff2020-11-25T03:29:08ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732020-01-01202010.1155/2020/88869328886932Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing ImagesYanyi Li0Jian Wang1Tong Gao2Qiwen Sun3Liguo Zhang4Mingxiu Tang5College of Geomatics, Shandong University of Science and Technology, Qingdao 266500, ChinaCollege of Geomatics, Shandong University of Science and Technology, Qingdao 266500, ChinaCollege of Ocean Science and Engineering, Shandong University of Science and Technology, Qingdao 266500, ChinaCollege of Geomatics, Shandong University of Science and Technology, Qingdao 266500, ChinaShandong Provincial Institute of Land Surveying and Mapping, Jinan 250001, ChinaCollege of Geomatics, Shandong University of Science and Technology, Qingdao 266500, ChinaTo overcome the difficulty of automating and intelligently classifying the ground features in remote-sensing hyperspectral images, machine learning methods are gradually introduced into the process of remote-sensing imaging. First, the PaviaU, Botswana, and Cuprite hyperspectral datasets are selected as research subjects in this study, and the objective is to process remote-sensing hyperspectral images via machine learning to realize the automatic and intelligent classification of features. Then, the basic principles of the support vector machine (SVM) and extreme learning machine (ELM) classification algorithms are introduced, and they are applied to the datasets. Next, by adjusting the parameter estimates using a restricted Boltzmann machine (RBM), a new terrain classification model of hyperspectral images that is based on a deep belief network (DBN) is constructed. Next, the SVM, ELM, and DBN classification algorithms for hyperspectral image terrain classification are analysed and compared in terms of accuracy and consistency. The results demonstrate that the average detection accuracies of ELM on the three datasets are 89.54%, 96.14%, and 96.28%, and the Kappa coefficient values are 0.832, 0.963, and 0.924; the average detection accuracies of SVM are 88.90%, 92.11%, and 91.68%, and the Kappa coefficient values are 0.768, 0.913, and 0.944; the average detection accuracies of the DBN classification model are 92.36%, 97.31%, and 98.84%, and the Kappa coefficient values are 0.883, 0.944, and 0.972. The results also demonstrate that the classification accuracy of the DBN algorithm exceeds those of the previous two methods because it fully utilizes the spatial and spectral information of hyperspectral remote-sensing images. In summary, the DBN algorithm that is proposed in this study has high application value in object classification for remote-sensing hyperspectral images.http://dx.doi.org/10.1155/2020/8886932 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yanyi Li Jian Wang Tong Gao Qiwen Sun Liguo Zhang Mingxiu Tang |
spellingShingle |
Yanyi Li Jian Wang Tong Gao Qiwen Sun Liguo Zhang Mingxiu Tang Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images Computational Intelligence and Neuroscience |
author_facet |
Yanyi Li Jian Wang Tong Gao Qiwen Sun Liguo Zhang Mingxiu Tang |
author_sort |
Yanyi Li |
title |
Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images |
title_short |
Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images |
title_full |
Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images |
title_fullStr |
Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images |
title_full_unstemmed |
Adoption of Machine Learning in Intelligent Terrain Classification of Hyperspectral Remote Sensing Images |
title_sort |
adoption of machine learning in intelligent terrain classification of hyperspectral remote sensing images |
publisher |
Hindawi Limited |
series |
Computational Intelligence and Neuroscience |
issn |
1687-5265 1687-5273 |
publishDate |
2020-01-01 |
description |
To overcome the difficulty of automating and intelligently classifying the ground features in remote-sensing hyperspectral images, machine learning methods are gradually introduced into the process of remote-sensing imaging. First, the PaviaU, Botswana, and Cuprite hyperspectral datasets are selected as research subjects in this study, and the objective is to process remote-sensing hyperspectral images via machine learning to realize the automatic and intelligent classification of features. Then, the basic principles of the support vector machine (SVM) and extreme learning machine (ELM) classification algorithms are introduced, and they are applied to the datasets. Next, by adjusting the parameter estimates using a restricted Boltzmann machine (RBM), a new terrain classification model of hyperspectral images that is based on a deep belief network (DBN) is constructed. Next, the SVM, ELM, and DBN classification algorithms for hyperspectral image terrain classification are analysed and compared in terms of accuracy and consistency. The results demonstrate that the average detection accuracies of ELM on the three datasets are 89.54%, 96.14%, and 96.28%, and the Kappa coefficient values are 0.832, 0.963, and 0.924; the average detection accuracies of SVM are 88.90%, 92.11%, and 91.68%, and the Kappa coefficient values are 0.768, 0.913, and 0.944; the average detection accuracies of the DBN classification model are 92.36%, 97.31%, and 98.84%, and the Kappa coefficient values are 0.883, 0.944, and 0.972. The results also demonstrate that the classification accuracy of the DBN algorithm exceeds those of the previous two methods because it fully utilizes the spatial and spectral information of hyperspectral remote-sensing images. In summary, the DBN algorithm that is proposed in this study has high application value in object classification for remote-sensing hyperspectral images. |
url |
http://dx.doi.org/10.1155/2020/8886932 |
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