Textural analysis for urban class discrimination using IKONOS imagery

High spatial resolution imagery can be a very significant source of detailed land cover and land use data necessary for better urban planning and management, which is becoming increasingly important due to the growing human population. However, traditional methods, based on spectral data, used to ex...

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Main Author: Kabir, Shahid
Other Authors: He, Dong-Chen
Language:English
Published: Université de Sherbrooke 2003
Online Access:http://savoirs.usherbrooke.ca/handle/11143/2407
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spelling ndltd-usherbrooke.ca-oai-savoirs.usherbrooke.ca-11143-24072016-04-07T05:22:38Z Textural analysis for urban class discrimination using IKONOS imagery Analyse texturale pour la discrimination des classes urbaines sur des images IKONOS Kabir, Shahid He, Dong-Chen High spatial resolution imagery can be a very significant source of detailed land cover and land use data necessary for better urban planning and management, which is becoming increasingly important due to the growing human population. However, traditional methods, based on spectral data, used to extract this information from remote sensing imagery have proven to be unsuitable for high-resolution images. Spatial data, or texture, has been widely investigated as a supplement to spectral data for the analysis of complex urban scenes. However, the application of these techniques on high spatial resolution imagery, such as those obtained by the IKONOS satellites, has yet to be studied. This research, therefore, focuses on the extraction of texture features through the use of the Grey Level Co-occurrence Matrix texture analysis technique, which are then combined with the spectral data in the Maximum Likelihood Classification approach, as a method for obtaining more accurate urban land cover and land use information from high spatial resolution IKONOS imagery. In this study, classifications were done using three datasets: a spatial dataset consisting of three texture channels (Mean, Homogeneity and Dissimilarity), a spectral dataset consisting of four spectral channels (Red, Green, Blue and N-IR), and a combination dataset (spatial and spectral). The results show that the spatial dataset produced an overall classification accuracy of 73.5%. The spectral dataset produced a slightly higher overall classification accuracy of 78.9%, an increase over the spatial dataset of 5.4%. The combination dataset produced the highest overall classification accuracy of 86.1%, which is an increase of 7.2% over the spectral dataset. These results demonstrate great potential for the contribution of texture and high-resolution images in deriving more accurate and detailed urban information. 2003 Mémoire 0494002727 http://savoirs.usherbrooke.ca/handle/11143/2407 eng © Shahid Kabir Université de Sherbrooke
collection NDLTD
language English
sources NDLTD
description High spatial resolution imagery can be a very significant source of detailed land cover and land use data necessary for better urban planning and management, which is becoming increasingly important due to the growing human population. However, traditional methods, based on spectral data, used to extract this information from remote sensing imagery have proven to be unsuitable for high-resolution images. Spatial data, or texture, has been widely investigated as a supplement to spectral data for the analysis of complex urban scenes. However, the application of these techniques on high spatial resolution imagery, such as those obtained by the IKONOS satellites, has yet to be studied. This research, therefore, focuses on the extraction of texture features through the use of the Grey Level Co-occurrence Matrix texture analysis technique, which are then combined with the spectral data in the Maximum Likelihood Classification approach, as a method for obtaining more accurate urban land cover and land use information from high spatial resolution IKONOS imagery. In this study, classifications were done using three datasets: a spatial dataset consisting of three texture channels (Mean, Homogeneity and Dissimilarity), a spectral dataset consisting of four spectral channels (Red, Green, Blue and N-IR), and a combination dataset (spatial and spectral). The results show that the spatial dataset produced an overall classification accuracy of 73.5%. The spectral dataset produced a slightly higher overall classification accuracy of 78.9%, an increase over the spatial dataset of 5.4%. The combination dataset produced the highest overall classification accuracy of 86.1%, which is an increase of 7.2% over the spectral dataset. These results demonstrate great potential for the contribution of texture and high-resolution images in deriving more accurate and detailed urban information.
author2 He, Dong-Chen
author_facet He, Dong-Chen
Kabir, Shahid
author Kabir, Shahid
spellingShingle Kabir, Shahid
Textural analysis for urban class discrimination using IKONOS imagery
author_sort Kabir, Shahid
title Textural analysis for urban class discrimination using IKONOS imagery
title_short Textural analysis for urban class discrimination using IKONOS imagery
title_full Textural analysis for urban class discrimination using IKONOS imagery
title_fullStr Textural analysis for urban class discrimination using IKONOS imagery
title_full_unstemmed Textural analysis for urban class discrimination using IKONOS imagery
title_sort textural analysis for urban class discrimination using ikonos imagery
publisher Université de Sherbrooke
publishDate 2003
url http://savoirs.usherbrooke.ca/handle/11143/2407
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