"Automated COVID-19 detection using Image Processing Techniques."

Background

Covid-19 is a highly infectious air borne disease which caused a lot of damage to life worldwide. One of the many challenges for containing the spread of COVID-19 is the ability to identify asymptomatic cases that result in spreading of the virus to close contacts.

Testing

Diagnostic tests can show if you suffer from an active COVID-19 infection and need to take steps to quarantine or isolate yourself from others. Antibody tests look for antibodies in your immune system produced in response to SARS-CoV-2, the virus that causes COVID-19.

Development

Recent studies revealed that Computed Tomography (CT) scan images can detect the COVID-19 disease in patients. This project is aimed to establish an early approach which is over-fitting independent and show accurate classification of CT-Scan images of lungs

Model

Automatic detection of COVID-19 based on DNN (Deep Neural Network) models are utilized in this work, along with the six distinct image processing models are applied on publicly available 402 COVID-19 infected and 397 normal images of lung CT-scan images.

About

This website has been made as a part of the course DSN-4099 Capstone Project 2021-22 by Team 8.

"Automated COVID-19 detection using Image Processing Techniques."

As a part of our Final Year Curriculum at VIT Bhopal University we the members of Team-8 have written a research paper titled "Automated COVID-19 detection using Image Processing Techniques." under the guidance of Dr.Anand Motwani Sir (Faculty SCSE VIT Bhopal) for the course Capstone Project (DSN-4099).

The DNN model is implemented for the automatic detection of various kinds of diseases and abnormalities in different image modalities. Automatic detection of COVID-19 based on DNN models are utilized in this work, along with the four distinct image processing models namely, convolution neural network, VGG-19, Inception, and Xception are applied on publicly available 402 COVID-19 infected and 397 normal images of lung CT-scan images.

View Paper

Documentation

Below given are the diagrams of the project cum paper.

Model

Upload a Chest CT scan image in the input section and our DNN model will give you the the percentage chance of having infected with COVID-19.

  • Input Specification
  • The input image should be either in .jpg or .png format.
  • The size of file should be less than 1MB.
  • Output





  • Output Inferences
  • If output is greater 75% then COVID 19 infection is severe.
  • If output is less than 75% COVID 19 infection is moderate.

Team 8

"The strength of the team is each individual member. The strength of each member is the team."

Avanish Sandilya

18BCE10067

Nishq Desai

18BCE10177

Rahul Khandebharad

18BCE10207

Siddhi Gupta

18BCE10268

Contact Us

We look forward to hear from you soon. Feel free to get in touch with us and provide your valuable comments on the project.