Effective Face Mask Detection by Deep ConvNeuralNets Learning for Covid-19 Prevention

Author:

Mr. Sangule Umesh 1,Mr. Dhotre Shreeyash 1,Mr. Raundal Yash 1,Mr. Gaikwad Vikas 1,Prof. Sharad M Rokade 1

Affiliation:

1. Sir Visvesvaraya Institute of Technology, Nashik, Maharashtra, India

Abstract

In Recent years, COVID-19 is the buzzword in our society, since it is too much dangerous, believed as it is originated from China from the place of Wuhan in December 2019. This Disease is spreading from humans to humans through droplets and airborne. A methodology has to be developed recognize whether the people are wearing mask or not. Therefore, this paper proposes a framework to recognize the mask. Based on the features proposes a machine learning basis system which recognizes the mask from the inputted image. Existing system Only detecting the person who is not using a mask apart from that system will not predict whether the used mask safe or not. A better deep learning framework which predicts the people with mask or not so it will be helping the society is discussed and apart from that this, it extends the mean of finding what type of mask they are wearing also predicts the efficiency of mask so user can protect themselves from the dreadful corona virus.

Publisher

Naksh Solutions

Subject

General Medicine

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