Kalaichelvi N

Work place: Department of Computer Science and Applications, The Gandhigram Rural Institute – Deemed University, Tamil Nadu, India

E-mail: chelvi.kalai7@gmail.com

Website:

Research Interests: Data Structures and Algorithms, Medical Image Computing, Image Processing, Image Manipulation, Image Compression

Biography

N. Kalaichelvireceived her Bachelor of Sciences (B.Sc.) degree in Physics in 2007 and Master of Computer Science & Applications in 2010 from The Gandhigram Rural University, Dindigul, Tamilnadu, India. She received her Master of Philosophy (M.Phil) degree in Computer Science in 2013 from Madurai Kamaraj University, Madurai, Tamilnadu, India. She was working as Assistant Professor from July 2010 – May2012 and from July 2015 – March2016 in the Centre for Geoinformatics, Department of Rural Development, The Gandhigram Rural Institute – Deemed University, Dindigul, Tamilnadu, India. She was working as Assistant Professor  from June – 2014 to June -2015 in the Department of computer Science in Prince Shri Venkateshwara Arts and Science College, Gowrivakkam, Chennai, Tamil nadu, India. Currently she is pursuing Ph.D. degree in The Gandhigram Rural Institute – Deemed University. Her research focuses on Brain Signal Segmentation. She has qualified State Eligibility Test for Lectureship in Feb-2016.

Author Articles
Automatic Brain Tissues Segmentation based on Self Initializing K-Means Clustering Technique

By Kalaiselvi T Kalaichelvi N Sriramakrishnan P

DOI: https://doi.org/10.5815/ijisa.2017.11.07, Pub. Date: 8 Nov. 2017

This paper proposed a self-initialization process to K-Means method for automatic segmentation of human brain Magnetic Resonance Image (MRI) scans. K-Means clustering method is an iterative approach and the initialization process is usually done either manually or randomly. In this work, a method has been proposed to make use of the histogram of the gray scale MRI brain images to automatically initialize the K-means clustering algorithm. This is done by taking the number of main peaks as well as their values as number of clusters and their initial centroids respectively. This makes the algorithm faster by reducing the number of iterations in segmenting the MRI image. The proposed method is named as Histogram Based Self Initializing K-Means (HBSIKM) method. Experiments were done with the MRI brain volumes available from Internet Brain Segmentation Repository (IBSR). Similarity validation was done by Dice coefficient with the available gold standards from the IBSR website. The performance of the proposed method is compared with the traditional K-Means method. For the IBSR volumes, the proposed method yields 3 to 4 times faster results and higher dice value than traditional K-Means method.

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