Journal
IMAGING SCIENCE JOURNAL
Volume 58, Issue 3, Pages 163-170Publisher
MANEY PUBLISHING
DOI: 10.1179/136821909X12581187860130
Keywords
texture analysis; classification; high-resolution; satellite imagery; urban environment
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Funding
- Natural Science and Engineering Research Council of Canada
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Traditional spectral-based methods of extracting urban land cover and land use information from remote sensing imagery have proven to be unsuitable for high spatial resolution images. Texture has been widely investigated as a supplement to spectral data for the analysis of complex urban scenes. This research evaluates the grey level co-occurrence matrix (GLCM) texture analysis technique and the maximum likelihood classification approach for the extraction of texture features to be combined with spectral data, as a method for obtaining more accurate urban land cover and land use information from high spatial resolution images. Classifications were performed on IKONOS imagery using three datasets: a spatial dataset consisting of three texture images (mean, homogeneity and dissimilarity), a spectral dataset consisting of four spectral images (red, green, blue and NIR) and a combination dataset (spatial and spectral). Results show that the combination dataset produced the highest overall classification accuracy of 86.1%, an improvement of 7.2% over the spectral dataset.
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