FACE MASK-WEARING CLASSIFICATION USING TRANSFER LEARNING TECHNIQUE WITH MOBILENETV2

Pham Nguyễn Minh Nhựt

Tóm tắt


The COVID-19 pandemic has adversely affected the global economy, politics, society, and other areas. It has dramatically led to a loss of human lives worldwide and is continuing to have a heavy impact on people's health and living conditions. In order to avoid the spread of this pandemic, mask-wearing is required by law or regulation in most places, especially indoors public places. Using Deep Learning techniques to detect and authenticate people wearing masks which can help recognize patterns or behavior of the public, contributing to limiting the rapid spread of COVID-19 pandemic is becoming effective, beneficial, and widespread. In spite of the fact that wearing face masks incorrectly will not protect ourselves, especially children, from virus transmission and will reduce the effectiveness of COVID-19 prevention, a limited study has been done to solve the problem of mask-wearing. We use the technique of transfer learning with MobileNetV2 to train the model from the Face Mask Label Dataset (FMLD) and Flickr Faces HQ (FFHQ) dataset to not only detect if a mask is used or not, but also classify the status of mask wearing over the faces. The results show that the trainning accuracy of experiment model is 99%

Từ khóa


COVID-19; masked face detection; face mask classification; face mask recognition; Deep Learning

Trích dẫn bài viết


Nguyen Minh Nhut Pham, Duc Hien Nguyen, Nga Le-Thi-Thu

Vietnam - Korea University of Information and Communication Technology, The University of DaNang, DaNang, VietNam




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