A comparison of hyperspectral data and worldview-2 images to detect impervious surface

One of the most important issues in urban area study during these years is loss of land resources due to rapid expansion and development of urban centers and cities therefore impervious surface (IS) is increased. Thus detection and mapping the impervious surface accurately is one of the important ta...

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Published in:American Society for Photogrammetry and Remote Sensing Annual Conference 2012, ASPRS 2012
Main Author: Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
Format: Conference paper
Language:English
Published: 2012
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-84873495384&partnerID=40&md5=df0db8275fc9fc5d4839fa760b830297
id 2-s2.0-84873495384
spelling 2-s2.0-84873495384
Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
A comparison of hyperspectral data and worldview-2 images to detect impervious surface
2012
American Society for Photogrammetry and Remote Sensing Annual Conference 2012, ASPRS 2012



https://www.scopus.com/inward/record.uri?eid=2-s2.0-84873495384&partnerID=40&md5=df0db8275fc9fc5d4839fa760b830297
One of the most important issues in urban area study during these years is loss of land resources due to rapid expansion and development of urban centers and cities therefore impervious surface (IS) is increased. Thus detection and mapping the impervious surface accurately is one of the important tasks in urban remote sensing. In this study, airborne hyperspectral data and Worldview-2 image were used to classify urban area .The main goal of this study are to compare the hyperspectral data and worldview 2 images and shows the potential of worldview 2 images for detection the impervious surface from the same area. Support vector machine was used as the classification method in both images. The result shows that the hyperspectral data is more accurate for detection of the materials in urban area especially roof type. The overall accuracy is 78% with 0.72 Kappa coefficients but on the other hand the overall accuracy of worldview 2 image is 72% with 0.65 Kappa coefficients. Thus finally based on the result the airborne hyperspectral data is more suitable for detecting the impervious surface in more detail but still there are some limitations. Furthermore the worldview 2 image shows good potential for detection the impervious surface in detail but further works should be done to combine the spectral information with spatial and texture information in order to improve the classification.


English
Conference paper

author Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
spellingShingle Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
A comparison of hyperspectral data and worldview-2 images to detect impervious surface
author_facet Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
author_sort Taherzadeh E.; Shafri H.Z.M.; Soltani S.H.K.; Mansor S.; Ashurov R.
title A comparison of hyperspectral data and worldview-2 images to detect impervious surface
title_short A comparison of hyperspectral data and worldview-2 images to detect impervious surface
title_full A comparison of hyperspectral data and worldview-2 images to detect impervious surface
title_fullStr A comparison of hyperspectral data and worldview-2 images to detect impervious surface
title_full_unstemmed A comparison of hyperspectral data and worldview-2 images to detect impervious surface
title_sort A comparison of hyperspectral data and worldview-2 images to detect impervious surface
publishDate 2012
container_title American Society for Photogrammetry and Remote Sensing Annual Conference 2012, ASPRS 2012
container_volume
container_issue
doi_str_mv
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-84873495384&partnerID=40&md5=df0db8275fc9fc5d4839fa760b830297
description One of the most important issues in urban area study during these years is loss of land resources due to rapid expansion and development of urban centers and cities therefore impervious surface (IS) is increased. Thus detection and mapping the impervious surface accurately is one of the important tasks in urban remote sensing. In this study, airborne hyperspectral data and Worldview-2 image were used to classify urban area .The main goal of this study are to compare the hyperspectral data and worldview 2 images and shows the potential of worldview 2 images for detection the impervious surface from the same area. Support vector machine was used as the classification method in both images. The result shows that the hyperspectral data is more accurate for detection of the materials in urban area especially roof type. The overall accuracy is 78% with 0.72 Kappa coefficients but on the other hand the overall accuracy of worldview 2 image is 72% with 0.65 Kappa coefficients. Thus finally based on the result the airborne hyperspectral data is more suitable for detecting the impervious surface in more detail but still there are some limitations. Furthermore the worldview 2 image shows good potential for detection the impervious surface in detail but further works should be done to combine the spectral information with spatial and texture information in order to improve the classification.
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