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  1. Home
  2. Dissertations
  3. Dissertations - Alliance College of Engineering & Design
  4. Computer Based COVID-19 Detection and Classification
 
  • Details

Computer Based COVID-19 Detection and Classification

Date Issued
2021-06
Author(s)
A, Raksha
Singh, Satyabhama
Das, Anindita
Editor(s)
Neelapala,Anil Kumar  
Alliance University::will be generated::person
Abstract
COVID-19 is a worldwide epidemic, as announced by the World Health Organization (WHO) in March 2020. Machine learning (ML) and Digital Image Processing methods can play vital roles in identifying COVID-19 patients by visually analyzing their chest x-ray images. In our project, a new ML method is proposed to classify the chest x-ray images into two classes, COVID-19 patient or non-COVID-19 person. ML has demonstrated high performance for several image processing applications such as image analysis, image classification, and image segmentation. Presently, there are two main methods for testing COVID-19 namely, Molecular test and Serological test. COVID-19 tests are new, and assessing their accuracy is challenging. PCR tests may produce false negatives. Apart from clinical procedures, machine learning will provide a lot of support in identifying the disease with the help of image data. The proposed method of COVID-19 x-ray image classification model begins by extracting the features from the input images, either COVID-19 or Non-COVID-19, using feature extraction technique and Machine Learning Algorithms are used to classify the chest X-ray images. In addition, our proposed model will also analyze the severity of the affected COVID-19 class. The proposed diagnosis will be cost-effective and more accurate than standard tests for COVID-19.
Subjects

Health

COVID-19

File(s)
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Name

G6 Project Report.pdf

Size

3.23 MB

Format

Adobe PDF

Checksum

(MD5):191f410162721675de95faed866a695a

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