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Accepted for/Published in: JMIR Public Health and Surveillance

Date Submitted: Jan 4, 2021
Date Accepted: Aug 17, 2021
Date Submitted to PubMed: Sep 3, 2021

The final, peer-reviewed published version of this preprint can be found here:

COVID-19 Mask Usage and Social Distancing in Social Media Images: Large-scale Deep Learning Analysis

Singh AK, Mehan P, Sharma D, Pandey R, Sethi T, Kumaraguru P

COVID-19 Mask Usage and Social Distancing in Social Media Images: Large-scale Deep Learning Analysis

JMIR Public Health Surveill 2022;8(1):e26868

DOI: 10.2196/26868

PMID: 34479183

PMCID: 8768939

(UN)MASKED COVID-19 TRENDS FROM SOCIAL MEDIA

  • Asmit Kumar Singh; 
  • Paras Mehan; 
  • Divyanshu Sharma; 
  • Rohan Pandey; 
  • Tavpritesh Sethi; 
  • Ponnurangam Kumaraguru

ABSTRACT

Background:

COVID-19 has affected the entire world. One useful protection method for people against COVID-19 is to wear masks in public areas.

Objective:

In this study we quantify the mask usage by analysing 2.04 social media images and find correlate it with the COVID-19 cases in those states and the movement restrictions imposed by their respective governments

Methods:

We propose a framework for classifying masked and unmasked faces and a segmentation based model to calculate the mask-fit score. Both the models trained in this study achieved an accuracy of 98%. Using the two trained deep learning models, 2.04 million social media images for six major US cities were analyzed.

Results:

Along with building a deep-learning mask classifier and mask-fit analyser, we open-source one of the largest dataset for face-mask classification tasks: VAriety MAsks - Classification (VAMA-C) and the world’s only dataset for mask-fit analysis tasks: VAriety MAsks - Segmentation (VAMA-S).

Conclusions:

By comparing the regulations, an increase in masks worn in images as the COVID-19 cases rose in these cities was observed, particularly when their respective states imposed strict regulations. Furthermore, mask compliance in the Black Lives Matter protest was analyzed, eliciting that 40% of the people in group photos wore masks, and 45% of them wore the masks with a fit score of greater than 80%.


 Citation

Please cite as:

Singh AK, Mehan P, Sharma D, Pandey R, Sethi T, Kumaraguru P

COVID-19 Mask Usage and Social Distancing in Social Media Images: Large-scale Deep Learning Analysis

JMIR Public Health Surveill 2022;8(1):e26868

DOI: 10.2196/26868

PMID: 34479183

PMCID: 8768939

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