Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features

Concerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of such datasets can compensate for the weakness of each other. This work have investigated the integration of multispectral and airborne LiDAR data for the land cover mapping of large urban area. Different...

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Main Authors: Jike Chen, Peijun Du, Changshan Wu, Junshi Xia, Jocelyn Chanussot
Format: Article
Language:English
Published: MDPI AG 2018-06-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/10/6/872
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spelling doaj-6433b6e6e3b64b678d5cc2ae7d8531502020-11-25T02:26:56ZengMDPI AGRemote Sensing2072-42922018-06-0110687210.3390/rs10060872rs10060872Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple FeaturesJike Chen0Peijun Du1Changshan Wu2Junshi Xia3Jocelyn Chanussot4Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210093, ChinaKey Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210093, ChinaDepartment of Geography, University of Wisconsin-Milwaukee, Milwaukee, WI 53211, USARIKEN Center for Advanced Intelligence Project, RIKEN, Tokyo 103-0027, JapanGrenoble-Image-Speech-Signal-Automatics Laboratory (GIPSA)-Lab., Grenoble Institute of Technology, University Grenoble Alpes, 38400 Grenoble, FranceConcerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of such datasets can compensate for the weakness of each other. This work have investigated the integration of multispectral and airborne LiDAR data for the land cover mapping of large urban area. Different LiDAR-derived features are involoved, including height, intensity, and multiple-return features. However, there is limited knowledge relating to the integration of multispectral and LiDAR data including three feature types for the classification task. Furthermore, a little contribution has been devoted to the relative importance of input features and the impact on the classification uncertainty by using multispectral and LiDAR. The key goal of this study is to explore the potenial improvement by using both multispectral and LiDAR data and to evaluate the importance and uncertainty of input features. Experimental results revealed that using the LiDAR-derived height features produced the lowest classification accuracy (83.17%). The addition of intensity information increased the map accuracy by 3.92 percentage points. The accuracy was further improved to 87.69% with the addition multiple-return features. A SPOT-5 image produced an overall classification accuracy of 86.51%. Combining spectral and spatial features increased the map accuracy by 6.03 percentage points. The best result (94.59%) was obtained by the combination of SPOT-5 and LiDAR data using all available input variables. Analysis of feature relevance demonstrated that the normalized digital surface model (nDSM) was the most beneficial feature in the classification of land cover. LiDAR-derived height features were more conducive to the classification of urban area as compared to LiDAR-derived intensity and multiple-return features. Selecting only 10 most important features can result in higher overall classification accuracy than all scenarios of input variables except the feature of entry scenario using all available input features. The variable importance varied a very large extent in the light of feature importance per land cover class. Results of classification uncertainty suggested that feature combination can tend to decrease classification uncertainty for different land cover classes, but there is no “one-feature-combination-fits-all” solution. The values of classification uncertainty exhibited significant differences between the land cover classes, and extremely low uncertainties were revealed for the water class. However, it should be noted that using all input variables resulted in relatively lower classification uncertainty values for most of the classes when compared to other input features scenarios.http://www.mdpi.com/2072-4292/10/6/872data fusionclassificationurban areaRandom Forestsfeature importanceclassification uncertainty
collection DOAJ
language English
format Article
sources DOAJ
author Jike Chen
Peijun Du
Changshan Wu
Junshi Xia
Jocelyn Chanussot
spellingShingle Jike Chen
Peijun Du
Changshan Wu
Junshi Xia
Jocelyn Chanussot
Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
Remote Sensing
data fusion
classification
urban area
Random Forests
feature importance
classification uncertainty
author_facet Jike Chen
Peijun Du
Changshan Wu
Junshi Xia
Jocelyn Chanussot
author_sort Jike Chen
title Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
title_short Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
title_full Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
title_fullStr Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
title_full_unstemmed Mapping Urban Land Cover of a Large Area Using Multiple Sensors Multiple Features
title_sort mapping urban land cover of a large area using multiple sensors multiple features
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-06-01
description Concerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of such datasets can compensate for the weakness of each other. This work have investigated the integration of multispectral and airborne LiDAR data for the land cover mapping of large urban area. Different LiDAR-derived features are involoved, including height, intensity, and multiple-return features. However, there is limited knowledge relating to the integration of multispectral and LiDAR data including three feature types for the classification task. Furthermore, a little contribution has been devoted to the relative importance of input features and the impact on the classification uncertainty by using multispectral and LiDAR. The key goal of this study is to explore the potenial improvement by using both multispectral and LiDAR data and to evaluate the importance and uncertainty of input features. Experimental results revealed that using the LiDAR-derived height features produced the lowest classification accuracy (83.17%). The addition of intensity information increased the map accuracy by 3.92 percentage points. The accuracy was further improved to 87.69% with the addition multiple-return features. A SPOT-5 image produced an overall classification accuracy of 86.51%. Combining spectral and spatial features increased the map accuracy by 6.03 percentage points. The best result (94.59%) was obtained by the combination of SPOT-5 and LiDAR data using all available input variables. Analysis of feature relevance demonstrated that the normalized digital surface model (nDSM) was the most beneficial feature in the classification of land cover. LiDAR-derived height features were more conducive to the classification of urban area as compared to LiDAR-derived intensity and multiple-return features. Selecting only 10 most important features can result in higher overall classification accuracy than all scenarios of input variables except the feature of entry scenario using all available input features. The variable importance varied a very large extent in the light of feature importance per land cover class. Results of classification uncertainty suggested that feature combination can tend to decrease classification uncertainty for different land cover classes, but there is no “one-feature-combination-fits-all” solution. The values of classification uncertainty exhibited significant differences between the land cover classes, and extremely low uncertainties were revealed for the water class. However, it should be noted that using all input variables resulted in relatively lower classification uncertainty values for most of the classes when compared to other input features scenarios.
topic data fusion
classification
urban area
Random Forests
feature importance
classification uncertainty
url http://www.mdpi.com/2072-4292/10/6/872
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AT peijundu mappingurbanlandcoverofalargeareausingmultiplesensorsmultiplefeatures
AT changshanwu mappingurbanlandcoverofalargeareausingmultiplesensorsmultiplefeatures
AT junshixia mappingurbanlandcoverofalargeareausingmultiplesensorsmultiplefeatures
AT jocelynchanussot mappingurbanlandcoverofalargeareausingmultiplesensorsmultiplefeatures
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