Title:Analysis of COVID-19 CT Chest Image Classification using Dl4jMlp Classifier
and Multilayer Perceptron in WEKA Environment
Volume: 20
Author(s): Sreejith S.*, J. Ajayan, N.V.Uma Reddy, Babu Devasenapati S. and Shashank Rebelli
Affiliation:
- New Horizon College of Engineering, Bengaluru, Karnataka, India
Keywords:
COVID-19 classification, Computed tomography, Deep learning, Multilayer perceptron, Confusion matrix, WEKA.
Abstract:
Introduction:
In recent years, various deep learning algorithms have exhibited remarkable performance in various data-rich applications, like health care, medical
imaging, as well as in computer vision. COVID-19, which is a rapidly spreading virus, has affected people of all ages both socially and
economically. Early detection of this virus is therefore important in order to prevent its further spread.
Methods:
COVID-19 crisis has also galvanized researchers to adopt various machine learning as well as deep learning techniques in order to combat the
pandemic. Lung images can be used in the diagnosis of COVID-19.
Results:
In this paper, we have analysed the COVID-19 chest CT image classification efficiency using multilayer perceptron with different imaging filters,
like edge histogram filter, colour histogram equalization filter, color-layout filter, and Garbo filter in the WEKA environment.
Conclusion:
The performance of CT image classification has also been compared comprehensively with the deep learning classifier Dl4jMlp. It was observed
that the multilayer perceptron with edge histogram filter outperformed other classifiers compared in this paper with 89.6% of correctly classified
instances.