Title of article :
Fusion noise-removal technique with modified dark-contrast algorithm for robust segmentation of acute leukemia cell images
Author/Authors :
Harun , Nor Hazlyna Data Science Research Lab - School of Computing - College of Arts and Science - Universiti Utara Malaysia, Kedah, Malaysia , Bakar , Juhaida Abu Data Science Research Lab - School of Computing - College of Arts and Science - Universiti Utara Malaysia, Kedah, Malaysia , Aini’ Hambali , Hamirul Data Science Research Lab - School of Computing - College of Arts and Science - Universiti Utara Malaysia, Kedah, Malaysia , Khair, Nurnadia Mohd Faculty of Engineering Technology - Universit i Malaysia Perlis - Perlis, Malaysia , Mashor, Mohd. Yusoff School of Mechatronics Engineering - Universiti Malaysia Perlis - Perlis, Malaysia , Hassan , Ros e line De partment of Hematol ogy - Universiti Sains Malaysia - Kelantan, Malaysia
Abstract :
Segmentation is the major area of interest in the field of image processing stage. In an automatic diagnosis of acute leukemia disease, the crucial process is to achieve the accurate segmentation of acute leukemia blood image. Generally, there are three requirements of image segmentation for medical purposes, namely; accuracy, robustness and effectiveness which have received considerable critical attention. As such, we propose a new (modified) dark contrast enhancement technique to enhance and automatically segment the acute leukemic cells. Subsequently, we used a fusion 7 × 7 median filter as well as the seeded region growing area extraction (SRGAE) algorithm to minimise the salt-and-pepper noise, apart from preserving the post-segmentation edge. As per the outcomes, the accuracy, sensitivity, and specificity of this method were 91.02%, 83.68%, and 91.57% respectively.
Keywords :
Modified dark contrast enhancement , Extraction , Seeded region growing area , Median filter , Acute leukemia
Journal title :
International Journal of Advances in Intelligent Informatics