Clas sifying Brain Anomalies Using PCA And SVM

Journal Title: International Journal of Scientific Research and Management - Year 2014, Vol 2, Issue 5

Abstract

In this research paper an automated intelligent classification system is proposed which caters the need for classification of image slices after identifying abnormal MRI volume, for anomalies identification. Features are extracted by the use of Principal component Analysis(PCA).SVM classifier is to group items that have similar feature values into two categories as normal or abnormal.RBF kernel function is to classify non-linear datas. Experimental results shows that the proposed system have high classification accuracy of 98% and outperformed all other classifiers tested. Software used is MATLAB R2012.

Authors and Affiliations

Rosy Kumari

Keywords

Related Articles

F uzzy Algebra a nd Fuzzy Automata

In this paper we represent a fuzzy algebra of standard basis, using fuzzy matrix. Any finitely generated subspace are fuzzy algebra (£) has a unique standard basis and have the same cardinality, and the standardbasis can...

A Study on Emotional Intelligence among Bank Employees in Vellore District

The purpose of this research study is to investigate the self - reported importance of “Emotional Intelligence of Bank Employees in Vellore District. This research study intends to explore the...

Chromosome Segmentation Using K-Means Clustering

Multiplex or multicolor fluorescence in situ hybridization (M -FISH) is a recently developed cytogenetic labeling technique which can be used to find out the chromosomal abnormalities for cance...

Study On Herzberg Intrinsic Factors Of Motivation

This study investiga tes the intrinsic factors of motivation that are essential and important for employees in educational sector. These factors consist of recognition, achievement motivation, work itself,...

Monitoring and Movement Detection of Patient Using Consecutive Frame Comparison Method

Detection of changes due to movement in a real time video is very important tool. Patient movement & monitoring system is a system that is used to detect movement changes in patient. Tho...

Download PDF file
  • EP ID EP209501
  • DOI -
  • Views 91
  • Downloads 0

How To Cite

Rosy Kumari (2014). Clas sifying Brain Anomalies Using PCA And SVM. International Journal of Scientific Research and Management, 2(5), -. https://europub.co.uk/articles/-A-209501