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Performance analysis of different wavelet feature vectors in quantification of oral precancerous condition
Authors:Mukherjee Anirban  Paul Ranjan Rashmi  Chaudhuri Keya  Chatterjee Jyotirmoy  Pal Mousumi  Banerjee Provas  Mukherjee Kanchan  Banerjee Swapna  Dutta Pranab K
Affiliation:Department of Electrical Engineering, Indian Institute of Technology, Kharagpur, 721302 West Bengal, India.
Abstract:This paper presents an automatic method for classification of progressive stages of oral precancerous conditions like oral submucous fibrosis (OSF). The classifier used is a three-layered feed-forward neural network and the feature vector, is formed by calculating the wavelet coefficients. Four wavelet decomposition functions, namely GABOR, HAAR, DB2 and DB4 have been used to extract the feature vector set and their performance has been compared. The samples used are transmission electron microscopic (TEM) images of collagen fibers from oral subepithelial region of normal and OSF patients. The trained network could classify normal fibers from less advanced and advanced stages of OSF successfully.
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