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

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Date

2016

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Volume Title

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Inderscience Enterprises Ltd.

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. © © 2016 Inderscience Enterprises Ltd.

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Keywords

Discrete wavelet transforms, Extraction, Feature extraction, Higher order statistics, Image segmentation, Iodine, Probability density function, Tumors, Active contours, Co-occurrence-matrix, Kurtosis, Region of interest, Textural analysis, Tumour detection, Magnetic resonance imaging

Citation

International Journal of Advanced Media and Communication, 2016, 6, 46114, pp. 211-234

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