Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis

Impervious surfaces have been widely considered as the key indicator for evaluating urbanization and environmental quality. As one of the most widely applied methods, spectral mixture analysis (SMA) has been commonly used for mapping urban impervious surface fractions. When implementing SMA, the ori...

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Main Author: Wenliang Li
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/13/2474
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spelling doaj-aa43fb1fc995467e91008a5810f8a8892021-07-15T15:44:11ZengMDPI AGRemote Sensing2072-42922021-06-01132474247410.3390/rs13132474Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture AnalysisWenliang Li0Department of Geography, Environment, and Sustainability, The University of North Carolina at Greensboro, Greensboro, NC 27412, USAImpervious surfaces have been widely considered as the key indicator for evaluating urbanization and environmental quality. As one of the most widely applied methods, spectral mixture analysis (SMA) has been commonly used for mapping urban impervious surface fractions. When implementing SMA, the original multispectral remote-sensing reflectance images are served as the foundation and key to successful SMA. However, the limited spectral variances among different land covers from the original reflectance images make it challenging in information extraction and results in unsatisfactory mapping results. To address this issue, a new method has been proposed in this study to improve urban impervious surface mapping through integrating statistical methods and SMA. In particular, two traditional statistical methods, principal component analysis (PCA) and minimum noise fraction rotation (MNF) were applied to highlight the spectral variances among different land covers. Three endmember classes (impervious surface, soil, and vegetation) and corresponding spectra were identified and extracted from the vertices of the 2-D space plots generated by the first three components of each of the statistical analysis methods, PCA and MNF. A new dataset was generated by stacking the first three components of the PCA and MNF (in a total of six components), and a fully constrained linear SMA was implemented to map the fractional impervious surfaces. Results indicate that a promising performance has been achieved by the proposed new method with the systematic error (SE) of −3.45% and mean absolute error (MAE) of 11.52%. Comparative analysis results also show a much better performance achieved by the proposed statistical method-based SMA than the conventional SMA.https://www.mdpi.com/2072-4292/13/13/2474impervious surfaceprincipal component analysisminimum noise fraction rotationspectral mixture analysis
collection DOAJ
language English
format Article
sources DOAJ
author Wenliang Li
spellingShingle Wenliang Li
Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
Remote Sensing
impervious surface
principal component analysis
minimum noise fraction rotation
spectral mixture analysis
author_facet Wenliang Li
author_sort Wenliang Li
title Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
title_short Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
title_full Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
title_fullStr Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
title_full_unstemmed Improving Urban Impervious Surfaces Mapping through Integrating Statistical Methods and Spectral Mixture Analysis
title_sort improving urban impervious surfaces mapping through integrating statistical methods and spectral mixture analysis
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-06-01
description Impervious surfaces have been widely considered as the key indicator for evaluating urbanization and environmental quality. As one of the most widely applied methods, spectral mixture analysis (SMA) has been commonly used for mapping urban impervious surface fractions. When implementing SMA, the original multispectral remote-sensing reflectance images are served as the foundation and key to successful SMA. However, the limited spectral variances among different land covers from the original reflectance images make it challenging in information extraction and results in unsatisfactory mapping results. To address this issue, a new method has been proposed in this study to improve urban impervious surface mapping through integrating statistical methods and SMA. In particular, two traditional statistical methods, principal component analysis (PCA) and minimum noise fraction rotation (MNF) were applied to highlight the spectral variances among different land covers. Three endmember classes (impervious surface, soil, and vegetation) and corresponding spectra were identified and extracted from the vertices of the 2-D space plots generated by the first three components of each of the statistical analysis methods, PCA and MNF. A new dataset was generated by stacking the first three components of the PCA and MNF (in a total of six components), and a fully constrained linear SMA was implemented to map the fractional impervious surfaces. Results indicate that a promising performance has been achieved by the proposed new method with the systematic error (SE) of −3.45% and mean absolute error (MAE) of 11.52%. Comparative analysis results also show a much better performance achieved by the proposed statistical method-based SMA than the conventional SMA.
topic impervious surface
principal component analysis
minimum noise fraction rotation
spectral mixture analysis
url https://www.mdpi.com/2072-4292/13/13/2474
work_keys_str_mv AT wenliangli improvingurbanimpervioussurfacesmappingthroughintegratingstatisticalmethodsandspectralmixtureanalysis
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