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Multiresolution Analysis of Connectivity
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Data Mining and Knowledge Engineering
Multiresolution Analysis of Connectivity
Atul Sajjanhar1 , Guojun Lu2 , Dengsheng Zhang2 and Tian Qi3 
| (1) |
School of Information Technology, Deakin University, 221 Burwood Highway, Burwood, VIC 3125, Australia |
| (2) |
Gippsland School of Computing & Information Technology, Monash University, Northways Road, Churchill, VIC 3842, Australia |
| (3) |
Media Division, Institute for Infocomm Research, 21 Heng Mui Keng Terrace, Singapore 119613, |
Abstract
Multiresolution histograms have been used for indexing and retrieval of images. Multiresolution histograms used traditionally are 2d-histograms which encode pixel intensities. Earlier we proposed a method for decomposing images by connectivity. In this paper, we propose to encode centroidal distances of an image in multiresolution histograms; the image is decomposed a priori, by connectivity. Multiresolution histograms thus obtained are 3d-histograms which encode connectivity and centroidal distances. The statistical technique of Principal Component Analysis is applied to multiresolution 3d-histograms and the resulting data is used to index images. Distance between two images is computed as the L2-difference of their principal components. Experiments are performed on Item S8 within the MPEG-7 image dataset. We also analyse the effect of pixel intensity thresholding on multiresolution images.
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