论文标题
(联合国)社交媒体的蒙面Covid-19趋势
(Un)Masked COVID-19 Trends from Social Media
论文作者
论文摘要
戴口罩是针对Covid-19的有用的保护方法,该方法在全球范围内引起了广泛的经济和社会影响。在全球范围内,政府赋予了使用面罩的授权,这些面具既接受了正面反应和负面反应。在线社交媒体提供了一个令人兴奋的平台,可以研究口罩的使用并分析戴潜在的面具模式。在本文中,我们分析了美国六个城市的204万个社交媒体图像。图像中戴的面具的增加被视为19案例增加了,尤其是当他们各自的州施加了严格的法规时。我们还发现,由于制定了全家法律,因此将小组图片的发布减少了。此外,分析了黑人生活问题抗议活动中的面具遵守情况,这引起了40%的小组照片中的人戴着口罩,其中45%的人戴着口罩,其合适得分超过80%。我们介绍了两个新数据集,分类掩码(VAMA -C)和品种面具 - 分段(VAMA -S),分别用于掩模检测和掩码拟合分析任务。为了进行分析,我们创建了两个框架,即面膜检测器(用于分类掩盖和未掩盖的面孔)和Mask Fit Analyzer(基于语义分割的模型,用于计算掩码拟合分数)。面罩检测器的分类精度为98%,蒙版拟合分析仪的语义分割模型达到了联合(IOU)分数的十字路口(IOU)98%。我们得出的结论是,这种框架可用于在大流行时期使用社交媒体平台评估此类公共卫生策略的有效性。
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 greater than 80%. We introduce two new datasets, VAriety MAsks - Classification (VAMA-C) and VAriety MAsks - Segmentation (VAMA-S), for mask detection and mask fit analysis tasks, respectively. For the analysis, we create two frameworks, face mask detector (for classifying masked and unmasked faces) and mask fit analyzer (a semantic segmentation based model to calculate a mask-fit score). The face mask detector achieved a classification accuracy of 98%, and the semantic segmentation model for the mask fit analyzer achieved an Intersection Over Union (IOU) score of 98%. We conclude that such a framework can be used to evaluate the effectiveness of such public health strategies using social media platforms in times of pandemic.