Microscopic parasite malaria classification using best feature selection based on generalized normal distribution optimization

Author:

Amin Javeria1ORCID,Almas Anjum Muhammad2,Ahmad Abraz1,Sharif Muhammad Irfan3,Kadry Seifedine4567,Kim Jungeun8

Affiliation:

1. University of Wah, Department of Computer Science, Wah Cantt, Pakistan

2. National University of Technology (NUTECH), Islamabad, Pakistan

3. Department of Information Sciences, University of Education Lahore, Jauharabad Campus, Jauharabad, Pakistan

4. Noroff University College, Kristiansand, Norway

5. Artificial Intelligence Research Center (AIRC), Ajman University, Ajman, UAE

6. MEU Research Unit, Middle East University, Amman, Jordan

7. Department of Electrical and Computer Engineering, Lebanese American University, Byblos, Lebanon

8. Department of Software, Kongju National University, Cheonan, Korea

Abstract

Malaria disease can indeed be fatal if not identified and treated promptly. Due to advancements in the malaria diagnostic process, microscopy techniques are employed for blood cell analysis. Unfortunately, the diagnostic process of malaria via microscopy depends on microscopic skills. To overcome such issues, machine/deep learning algorithms can be proposed for more accurate and efficient detection of malaria. Therefore, a method is proposed for classifying malaria parasites that consist of three phases. The bilateral filter is applied to enhance image quality. After that shape-based and deep features are extracted. In shape-based pyramid histograms of oriented gradients (PHOG) features are derived with the dimension of N × 300. Deep features are derived from the residual network (ResNet)-50, and ResNet-18 at fully connected layers having the dimension of N × 1,000 respectively. The features obtained are fused serially, resulting in a dimensionality of N × 2,300. From this set, N × 498 features are chosen using the generalized normal distribution optimization (GNDO) method. The proposed method is accessed on a microscopic malarial parasite imaging dataset providing 99% classification accuracy which is better than as compared to recently published work.

Funder

National Research Foundation of Korea

Technology Development Program of MSS

Publisher

PeerJ

Subject

General Computer Science

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