Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis

Sensor data analysis is used in many application areas, for example, Artificial Intelligence of Things (AIoT), with the rapid developing of the deep neural network learning that promotes its application area. In this work, we propose the Depth and Width Changeable Deep Kernel Learning-based hyperspe...

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Main Authors: Jing Liu, Tingting Wang, Yulong Qiao
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/8842396
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spelling doaj-88aabf885c254f748dda2f168c52e2532021-03-08T02:01:53ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/8842396Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data AnalysisJing Liu0Tingting Wang1Yulong Qiao2College of Information and Communication EngineeringSchool of Electronics and Information EngineeringCollege of Information and Communication EngineeringSensor data analysis is used in many application areas, for example, Artificial Intelligence of Things (AIoT), with the rapid developing of the deep neural network learning that promotes its application area. In this work, we propose the Depth and Width Changeable Deep Kernel Learning-based hyperspectral sensing data analysis algorithm. Compared with the traditional kernel learning-based hyperspectral data classification, the proposed method has its advantages on the hyperspectral data classification. With the deep kernel learning, the feature is mapped through many times mapping and has the more discriminative ability. So, the deep kernel learning has the better performance compared with the multiple kernels learning. And it has the ability to adjust the network architecture for hyperspectral data space, with the optimization equation of the span bound. The experiments are implemented to testified the feasibility and performance of the algorithms on the hyperspectral data analysis, with the classification accuracy of hyperspectral data. The comprehensive analysis of the experiments shows that the proposed algorithm is feasible to hyperspectral sensor data analysis and its promising classification method in many areas data analysis.http://dx.doi.org/10.1155/2021/8842396
collection DOAJ
language English
format Article
sources DOAJ
author Jing Liu
Tingting Wang
Yulong Qiao
spellingShingle Jing Liu
Tingting Wang
Yulong Qiao
Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
Wireless Communications and Mobile Computing
author_facet Jing Liu
Tingting Wang
Yulong Qiao
author_sort Jing Liu
title Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
title_short Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
title_full Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
title_fullStr Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
title_full_unstemmed Depth and Width Changeable Network-Based Deep Kernel Learning-Based Hyperspectral Sensor Data Analysis
title_sort depth and width changeable network-based deep kernel learning-based hyperspectral sensor data analysis
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description Sensor data analysis is used in many application areas, for example, Artificial Intelligence of Things (AIoT), with the rapid developing of the deep neural network learning that promotes its application area. In this work, we propose the Depth and Width Changeable Deep Kernel Learning-based hyperspectral sensing data analysis algorithm. Compared with the traditional kernel learning-based hyperspectral data classification, the proposed method has its advantages on the hyperspectral data classification. With the deep kernel learning, the feature is mapped through many times mapping and has the more discriminative ability. So, the deep kernel learning has the better performance compared with the multiple kernels learning. And it has the ability to adjust the network architecture for hyperspectral data space, with the optimization equation of the span bound. The experiments are implemented to testified the feasibility and performance of the algorithms on the hyperspectral data analysis, with the classification accuracy of hyperspectral data. The comprehensive analysis of the experiments shows that the proposed algorithm is feasible to hyperspectral sensor data analysis and its promising classification method in many areas data analysis.
url http://dx.doi.org/10.1155/2021/8842396
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AT tingtingwang depthandwidthchangeablenetworkbaseddeepkernellearningbasedhyperspectralsensordataanalysis
AT yulongqiao depthandwidthchangeablenetworkbaseddeepkernellearningbasedhyperspectralsensordataanalysis
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