COVID-19 has led to a worldwide surge of
patients with acute respiratory distress syndrome
(ARDS) in intensive care units. Milder cases of the virus
that do not reach the ARDS stage are still often
characterized by inflammation of the lung, causing
shortness of breath. A salient step in fighting COVID-19
is the ability to detect infected patients early enough to
be able to put them under special care. Detecting the
virus from radiology images can be a much-needed,
expeditious method to diagnose patients. Given this, we
propose a method to detect COVID-19 using chest X-ray
images as well as embeddings generated from such
images. The model used to train this COVID-19 data is a
Support Vector Machine (SVM) Classifier. We achieved
an accuracy of 55% on raw image data and 63% on
embeddings of X-ray images generated using Resnet.
Further refinement is possible by training a larger image
data set, extra pre-processing steps and data image
refining techniques, and more sophisticated modelling to
improve accuracy
Keywords : SVM, COVID-19, X-ray, Machine Learning