(Un)Masked COVID-19 Trends from Social Media
Asmit Kumar Singh, Paras Mehan, Divyanshu Sharma, Rohan Pandey,, Tavpritesh Sethi, Ponnurangam Kumaraguru

TL;DR
This study analyzes social media images to understand mask-wearing patterns during COVID-19, introducing new datasets and models for mask detection and fit analysis, revealing correlations with pandemic trends and public health measures.
Contribution
It presents novel datasets and models for mask detection and fit analysis, enabling evaluation of mask compliance and public health strategies through social media data.
Findings
Mask usage increased with rising COVID-19 cases and regulations.
40% of group photos at BLM protests showed mask-wearing.
The models achieved 98% accuracy in classification and segmentation.
Abstract
Wearing masks is a useful protection method against COVID-19, which has caused widespread economic and social impact worldwide. Across the globe, governments have put mandates for the use of face masks, which have received both positive and negative reaction. Online social media provides an exciting platform to study the use of masks and analyze underlying mask-wearing patterns. In this article, we analyze 2.04 million social media images for six US cities. An increase in masks worn in images is seen as the COVID-19 cases rose, particularly when their respective states imposed strict regulations. We also found a decrease in the posting of group pictures as stay-at-home laws were put into place. 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…
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Taxonomy
TopicsCOVID-19 epidemiological studies · COVID-19 Pandemic Impacts · Infection Control and Ventilation
