The COVID-19 outbreak has affected millions of people across the globe and is continuing to spread at a drastic scale. Out of the numerous steps taken to control the spread of the virus, social distancing has been a crucial and effective practice. However, recent reports of social distancing violations suggest the need for non-intrusive detection techniques to ensure safety in public spaces. In this paper, a real-time detection model is proposed to identify handshake interactions in a range of realistic scenarios with multiple people in the scene and also detect multiple interactions in a single frame. This is the first work that performs dyadic interaction localization in a multi-person setting. The efficacy of the proposed model was evaluated across two different datasets on more than 3200 frames, thus enabling a robust localization model in different environments. The proposed model is the first dyadic interaction localizer in a multi-person setting, which enables it to be used in public spaces to identify handshake interactions and thereby identify and mitigate COVID-19 transmission.
翻译:COVID-19疫情已影响到全球数百万人,并正在以惊人的规模继续蔓延。在为控制病毒传播而采取的众多步骤中,社会偏移是一个关键和有效的做法。然而,最近关于社会偏移违规的报告表明,需要有非侵入性检测技术来确保公共场所的安全。在本文件中,提议了一个实时检测模型,在一系列现实情景中确定与现场多人的握手互动,并在一个单一框架中检测多个互动。这是在多人环境中进行三角互动定位的首次工作。在超过3200个框架的两套不同的数据集中评估了拟议模型的功效,从而在不同环境中形成了一个强有力的本地化模型。拟议模型是多人环境中的第一个dyadic互动定位器,它能够在公共场所用于识别握手互动,从而识别和减缓COVID-19的传播。