A Novel Contrast Enhancement Technique Based on Combination of Local and Global Statistical Data on Malaria Images

Author:

Kanafiah Siti Nurul Aqmariah Mohd1,Mashor Mohd Yusoff1,Mustafa Wan Azani2,Mohamed Zeehaida3,Shukor Shazmin Aniza Abdul1,Yazid Haniza1,Yahya Z.R.1

Affiliation:

1. University Malaysia Perlis

2. Universiti Malaysia Perlis

3. Universiti Sains Malaysia

Abstract

Malaria appears to be one of the main reasons for detrimental health issue at the global scale that is responsible for approximately half a million deaths every year. As the cases of malaria seem to escalate at an annual rate, it is vital to provide a rapid and accurate diagnosis through manual microscopic assessment in the attempt to control the spread of malaria. Nevertheless, varied staining steps and noise disruptions can cause inaccurate diagnosis due to wrong interpretation. Hence, to address such issues, this study investigated the performance upon removing background noise and the method of correcting illumination that has an impact upon segmentation for a computer-assisted diagnostic system. The findings display that the technique of based on Otsu threshold and statistic data used to enhance the contrast image as to determine cells infected by the malaria parasite, in comparison to other methods. In fact, this method was tested on 450 malaria images, which consisted of P. Vivax, P. Falciparum, and P. Knowlesi species at the stages of trophozoite, schizont, and gametocyte. As a result, the HSE approach yielded 1.31 for Global Contrast Factor (GCF), while 10.56 for Signal Noise Ratio (SNR).

Publisher

Trans Tech Publications, Ltd.

Subject

General Medicine

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1. Clasification of Malaria Images in Thropozoid Stages Using Deep Learning Models;2023 International Conference on Modeling & E-Information Research, Artificial Learning and Digital Applications (ICMERALDA);2023-11-24

2. Intelligent Classification Procedure for Plasmodium Knowlesi Malaria Species;2022 2nd International Conference on Electronic and Electrical Engineering and Intelligent System (ICE3IS);2022-11-04

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