IMAGE SEGMENTATION TECHNIQUES FOR RED BLOOD CELL : ON OVERVIEW

Authors

  • Laghouiter Oussama Biomedical Engineering Modeling and Simulation(BIOMEMS) Research Group Department of Electronics Engineering (FKEE),University Tun Hussein Onn Malaysia, Johor, Malaysia
  • M. Mahadi Abdul Jamil Biomedical Engineering Modeling and Simulation(BIOMEMS) Research Group Department of Electronics Engineering (FKEE),University Tun Hussein Onn Malaysia, Johor, Malaysia
  • Wan Mahani Hafiza Bt. Wan Mahmud Biomedical Engineering Modeling and Simulation(BIOMEMS) Research Group Department of Electronics Engineering (FKEE),University Tun Hussein Onn Malaysia, Johor, Malaysia

DOI:

https://doi.org/10.11113/jt.v77.6230

Keywords:

Image processing, medical image, segmentation, red blood cell image patient treatment.

Abstract

Image processing technique applies in different domains, such as medical, remote sensing and security. This techniques Aims to get a simple image called -image processed- should retain maximum useful information. The sensitive step in image processing is segmentation of image. Segmentation is first stage in medical image analysis seeded to two categories supervised and unsupervised technique. Accuracy of this stage affects the whole system performance. This paper present some methods applied for blood cell image segmentation and compares previous studies of overlapping cell division method. The common goal about this area is accuracy of counting the number of red blood cells (RBC) or white blood cells (WBC), which decrease with effect of some diseases such as anemia and leukemia. And makes it a critical factor in patient treatments.

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Published

2015-11-11

Issue

Section

Science and Engineering

How to Cite

IMAGE SEGMENTATION TECHNIQUES FOR RED BLOOD CELL : ON OVERVIEW. (2015). Jurnal Teknologi, 77(6). https://doi.org/10.11113/jt.v77.6230