EMITTER International Journal of Engineering Technology
Vol 10 No 1 (2022)

A Machine learning Classification approach for detection of Covid 19 using CT images

Suguna G C (JSS Academy Of Technical Education)
Veerabhadrappa S T (JSS Academy of Technical Education Bengaluru, India)
Tejas A (JSS Academy of Technical Education Bengaluru, India)
Vaishnavi P (JSS Academy of Technical Education Bengaluru, India)
Raghunandan Gowda (JSS Academy of Technical Education Bengaluru, India)
Panchami Udupa (JSS Academy of Technical Education Bengaluru, India)
Spoorthy (JSS Academy of Technical Education Bengaluru, India)
Smitha Reddy (JSS Academy of Technical Education Bengaluru, India)
Sudarshan E (JSS Academy of Technical Education Bengaluru, India)



Article Info

Publish Date
24 Jun 2022

Abstract

Coronavirus disease 2019 popularly known as COVID 19 was first found in Wuhan, China in December 2019. World Health Organization declared Covid 19 as a transmission disease. The symptoms were cough, loss of taste, fever, tiredness, respiratory problem. These symptoms were likely to show within 11 –14 days. The RT-PCR and rapid antigen biochemical tests were done for the detection of COVID 19. In addition to biochemical tests, X-Ray and Computed Tomography (CT) images are used for the minute details of the severity of the disease. To enhance efficiency and accuracy of analysis/detection of COVID images and to reduce of doctors' time for analysis could be addressed through Artificial Intelligence. The dataset from Kaggle was utilized to analyze. The statistical and GLCM features were extracted from CT images for the classification of COVID and NON-COVID instances in this study. CT images were used to extract statistical and GLCM features for categorization. In the proposed/prototype model, we achieved the classification accuracy of 91%, and 94.5% using SVM and Random Forest respectively.

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Journal Info

Abbrev

EMITTER

Publisher

Subject

Computer Science & IT

Description

EMITTER International Journal of Engineering Technology is a BI-ANNUAL journal published by Politeknik Elektronika Negeri Surabaya (PENS). It aims to encourage initiatives, to share new ideas, and to publish high-quality articles in the field of engineering technology and available to everybody at ...