Author/Authors :
Sheikh Abdullah, Siti Norul Huda Faculty of Information Science and Technology - Universiti Kebangsaan Malaysia - Bangi, Malaysia , Bohani, Farah Aqilah Faculty of Information Science and Technology - Universiti Kebangsaan Malaysia - Bangi, Malaysia , Nayef, Baher H Faculty of Information Science and Technology - Universiti Kebangsaan Malaysia - Bangi, Malaysia , Sahran, Shahnorbanun Faculty of Information Science and Technology - Universiti Kebangsaan Malaysia - Bangi, Malaysia , Al Akash, Omar Faculty of Information Science and Technology - Universiti Kebangsaan Malaysia - Bangi, Malaysia , Hussain, Rizuana Iqbal Department of Radiology - UKM Medical Center - Universiti Kebangsaan Malaysia - Cheras - Kuala Lumpur, Malaysia , Ismail, Fuad Department of Radiotherapy and Oncology - UKM Medical Center - Universiti Kebangsaan Malaysia - Cheras - Kuala Lumpur, Malaysia
Abstract :
Brain magnetic resonance imaging (MRI) classification into normal and abnormal is a critical and challenging task. Owing to that,
several medical imaging classification techniques have been devised in which Learning Vector Quantization (LVQ) is amongst the
potential. The main goal of this paper is to enhance the performance of LVQ technique in order to gain higher accuracy detection
for brain tumor in MRIs. The classical way of selecting the winner code vector in LVQ is to measure the distance between the input
vector and the codebook vectors using Euclidean distance function. In order to improve the winner selection technique, round off
function is employed along with the Euclidean distance function. Moreover, in competitive learning classifiers, the fitting model
is highly dependent on the class distribution. Therefore this paper proposed a multiresampling technique for which better class
distribution can be achieved. This multiresampling is executed by using random selection via preclassification. The test data sample
used are the brain tumor magnetic resonance images collected from Universiti Kebangsaan Malaysia Medical Center and UCI
benchmark data sets. Comparative studies showed that the proposed methods with promising results are LVQ1, Multipass LVQ,
Hierarchical LVQ, Multilayer Perceptron, and Radial Basis Function.