Implementation of Convolutional Neural Network in the classification of red blood cells have affected of malaria

Author:

Harahap Mawaddah,Jefferson Jefferson,Barti Surya,Samosir Suprianto,Turnip Christi Andika

Abstract

Malaria is a disease caused by plasmodium which attacks red blood cells. Diagnosis of malaria can be made by examining the patient's red blood cells using a microscope. Convolutional Neural Network (CNN) is a deep learning method that is growing rapidly. CNN is often used in image classification. The CNN process usually requires considerable resources. This is one of the weaknesses of CNN. In this study, the CNN architecture used in the classification of red blood cell images is LeNet-5 and DRNet. The data used is a segmented image of red blood cells and is secondary data. Before conducting the data training, data pre-processing and data augmentation from the dataset was carried out. The number of layers of the LeNet-5 and DRNet models were 4 and 7. The test accuracy of the LeNet-5 and DrNet models was 95% and 97.3%, respectively. From the test results, it was found that the LeNet-5 model was more suitable in terms of red blood cell classification. By using the LeNet-5 architecture, the resources used to perform classification can be reduced compared to previous studies where the accuracy obtained is also the same because the number of layers is less, which is only 4 layers

Publisher

Politeknik Ganesha

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Hyperparameter tuning for malaria detection using convolution neural network;AIP Conference Proceedings;2024

2. ReRNet: A Deep Learning Network for Classifying Blood Cells;Technology in Cancer Research & Treatment;2023-01

3. Deep-Learning Methods for the Classification of Normal and Pathological Blood Cells and Bone-Marrow Cells: A Comprehensive Review;12th International Conference on Information Systems and Advanced Technologies “ICISAT 2022”;2023

4. Comparison of CNN Architecture for White Blood Cells Image Classification;2022 IEEE International Conference of Computer Science and Information Technology (ICOSNIKOM);2022-10-19

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