Multi Deep Learning to Diagnose COVID-19 in Lung X-Ray Images with Majority Vote Technique
Date
2020-10-07Author
FIBRIANI, Ike
WIDJONARKO, Widjonarko
PRASETYO, Aris
RAHARJO, Angga Mardro
IRAWAN, Dasapta Erwin
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The COVID-19 pandemic has become the focus of world problems that need to be resolved. This is because
the rate of spread is speedy and able to take down the world's health system. Therefore, many researchers are focusing
their research on solving this problem by doing an initial screening on the X-Ray image of the subject's lungs. One of
them is by using Deep Learning. Several articles that talk about implemented Deep Learning for classifying X-Ray
images have been published. But most of them are comparing different architecture CNN (Convolutional Neural
Network). In this study, the authors try to create a multi-classifier Deep Learning system that consists of nine different
CNN architectures and combined with three different Majority Vote techniques. The target of this research is to
maximize the performance of classification and to minimize errors because the final decision is a compilation of
decisions contained in each CNN architecture. Several models of CNN are tested in this study, both the model which
used Majority Vote and Conventional CNN. The results show that the proposed model achieves an accuracy value
average F1-Score 0.992 and Accuracy 0.993, according to 5 K-Fold test. The best model is CNN, which used Soft
Majority Vote.
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