A novel machine learning scheme for face mask detection using pretrained convolutional neural network.

T M Saravanan, K Karthiha, R Kavinkumar, S Gokul, Jay Prakash Mishra
Author Information
  1. T M Saravanan: Department of Computer Applications, Kongu Engineering College, Perundurai 638 060, Tamil Nadu, India.
  2. K Karthiha: Department of Computer Applications, Kongu Engineering College, Perundurai 638 060, Tamil Nadu, India.
  3. R Kavinkumar: Department of Computer Applications, Kongu Engineering College, Perundurai 638 060, Tamil Nadu, India.
  4. S Gokul: Department of Computer Applications, Kongu Engineering College, Perundurai 638 060, Tamil Nadu, India.
  5. Jay Prakash Mishra: Department of Computer Applications, Kongu Engineering College, Perundurai 638 060, Tamil Nadu, India.

Abstract

Corona virus 2019 (COVID-19) erupted toward the end of 2019, and it has continued to be a source of concern for a large number of people and organizations well into 2020. Wearing a face cover has been shown in studies to reduce the risk of viral transmission while also providing a sense of security. Be that as it may, it isn't attainable to physically follow the execution of this strategy. This proposed system is built by pretrained deep learning model, Vgg16. The proposed scheme is easy to implement and use all the layers in vgg16 model and train only the last layer called fully connected layer, which reduce the training time and effort. The proposed scheme is trained and evaluated using two Face mask datasets, one having 1484 pictures and the other with 7200. For a smaller dataset, augmented pictures were utilized to enhance accuracy. The suggested model is tested on unknown pictures, and it correctly predicts whether the image is wearing a mask or not. The proposed scheme gives accuracy 96.50% during testing in small dataset. The model gives accuracy in medium dataset is 91% during testing. By using vgg16 pretrained model and image augmentation in the dataset improves performance and gives a high accuracy.

Keywords

References

  1. IEEE Sens J. 2021 Feb 22;21(9):11084-11093 [PMID: 36820762]
  2. Cogn Res Princ Implic. 2018 Jun 27;3:24 [PMID: 30009254]
  3. Measurement (Lond). 2021 Jan 1;167:108288 [PMID: 32834324]
  4. Sustain Cities Soc. 2021 Mar;66:102692 [PMID: 33425664]
  5. Mater Today Proc. 2021 Feb 20;: [PMID: 33643853]

Word Cloud

Created with Highcharts 10.0.0modelschemeproposedlearningmaskdatasetaccuracypretrainedusingpicturesgives2019facereduceVgg16vgg16layerFaceimagetestingaugmentationmachinedetectionCoronavirusCOVID-19eruptedtowardendcontinuedsourceconcernlargenumberpeopleorganizationswell2020Wearingcovershownstudiesriskviraltransmissionalsoprovidingsensesecuritymayattainablephysicallyfollowexecutionstrategysystembuiltdeepeasyimplementuselayerstrainlastcalledfullyconnectedtrainingtimeefforttrainedevaluatedtwodatasetsone14847200smalleraugmentedutilizedenhancesuggestedtestedunknowncorrectlypredictswhetherwearing9650%smallmedium91%improvesperformancehighnovelconvolutionalneuralnetworkImageTransfer

Similar Articles

Cited By (5)