Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet

In this paper, a new computation for gray level co-occurrence matrix (GLCM) is proposed. The aim is to reduce the computation burden of the original GLCM computation. The proposed computation will be based on Haar wavelet transform. Haar wavelet transform is chosen because the resulting wavelet band...

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Main Authors: Abu Bakar, S.A.R, Mokji, M.M
Format: Article
Published: 2007
Online Access:http://eprints.utm.my/8774/
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author Abu Bakar, S.A.R
Mokji, M.M
author_facet Abu Bakar, S.A.R
Mokji, M.M
author_sort Abu Bakar, S.A.R
building UTeM Institutional Repository
collection Online Access
description In this paper, a new computation for gray level co-occurrence matrix (GLCM) is proposed. The aim is to reduce the computation burden of the original GLCM computation. The proposed computation will be based on Haar wavelet transform. Haar wavelet transform is chosen because the resulting wavelet bands are strongly correlated with the orientation elements in the GLCM computation. The second reason is because the total pixel entries for Haar wavelet transform is always minimum. Thus, the GLCM computation burden can be reduced. The proposed computation is tested with the classification performance of the Brodatz texture images. Although the aim is to achieve at least similar performance with the original GLCM computation, the proposed computation gives a slightly better performance compare to the original GLCM computation.
first_indexed 2025-11-15T21:03:09Z
format Article
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institution Universiti Teknologi Malaysia
institution_category Local University
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publishDate 2007
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spelling utm-87742017-10-19T03:43:44Z http://eprints.utm.my/8774/ Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet Abu Bakar, S.A.R Mokji, M.M In this paper, a new computation for gray level co-occurrence matrix (GLCM) is proposed. The aim is to reduce the computation burden of the original GLCM computation. The proposed computation will be based on Haar wavelet transform. Haar wavelet transform is chosen because the resulting wavelet bands are strongly correlated with the orientation elements in the GLCM computation. The second reason is because the total pixel entries for Haar wavelet transform is always minimum. Thus, the GLCM computation burden can be reduced. The proposed computation is tested with the classification performance of the Brodatz texture images. Although the aim is to achieve at least similar performance with the original GLCM computation, the proposed computation gives a slightly better performance compare to the original GLCM computation. 2007 Article PeerReviewed Abu Bakar, S.A.R and Mokji, M.M (2007) Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet. Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet, N/A (n/a). pp. 273-279. ISSN 0-7695-2928-3 http://doi.ieeecomputersociety.org/10.1109/CGIV.2007.45 10.1109/CGIV.2007.45
spellingShingle Abu Bakar, S.A.R
Mokji, M.M
Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title_full Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title_fullStr Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title_full_unstemmed Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title_short Gray Level Co-Occurrence Matrix Computation Based on Haar Wavelet
title_sort gray level co-occurrence matrix computation based on haar wavelet
url http://eprints.utm.my/8774/
http://eprints.utm.my/8774/
http://eprints.utm.my/8774/