An efficient framework for segmentation and identification of tumours in brain MR images

No Thumbnail Available

Date

2016

Authors

Parameshwari, D.S.
Aparna, P.

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

In this research work, two efficient textural feature extraction (TFE) algorithms (TFEA-I and TFEA-II) are proposed for a class of brain magnetic resonance imaging (MRI) applications. TFEA-I employs higher order statistical cumulant, namely, Kurtosis in order to generate a feature set based on the probability density function (PDF) of generalised Gaussian model that represents thewavelet coefficient energies of the sub-bands of decomposed image. TFEA-II derives a feature set employing cooccurrence matrix model for second order statistical characterisation of wavelet coefficients. In conjunction with TFEA-I and TFEA-II, we propose segmentation framework to compute coarse and smooth segmented boundaries for the tumour. When compared with the conventional TFEA methods reported in the literature, the use of proposed TFEA-I and TFEA-II results in two important advantages; considerable reduction in the feature set size and elimination of the need for using specialised feature selection/reduction algorithms thereby making them highly attractive for a class of brain MR imaging application. Copyright 2016 Inderscience Enterprises Ltd.

Description

Keywords

Citation

International Journal of Advanced Media and Communication, 2016, Vol.6, 43923, pp.211-234

Endorsement

Review

Supplemented By

Referenced By