Please use this identifier to cite or link to this item: http://lib.hpu.edu.vn/handle/123456789/22709
Title: Image Processing Techniques for Unsupervised Pattern Classification
Authors: Botte-Lecocq, C.
Hammouche, K.
Moussa, A.
Keywords: Scene Reconstruction Pose Estimation and Tracking
Issue Date: 2007
Publisher: INTECH Open Access Publisher
Abstract: All the clustering methods presented in this chapter tend to generalize bi-dimensional procedures initially developed for image processing purpose. Among them, thresholding, edge detection, probabilistic relaxation, mathematical morphology, texture analysis, and Markov field models appear to be valuable tools with a wide range of applications in the field of unsupervised pattern classification. Following the same idea of adapting image processing techniques to cluster analysis, one of our other objectives is to model spatial relationships between pixels by means of other textural parameters derived from autoregressive models (Comer & Delp, 1999), Markov random fields models (Cross & Jain, 1983), Gabor filters (Jain & Farrokhnia, 1991), wavelet coefficients (Porter & Canagarajah, 1996) and fractal geometry (Keller & Crownover, 1989)
URI: https://lib.hpu.edu.vn/handle/123456789/22709
ISBN: 978-3-902613-06-6
Appears in Collections:Education

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