Author:
Wang Qu,Fu Meixia,Wang Jianquan,Sun Lei,Huang Rong,Li Xianda,Jiang Zhuqing
Abstract
AbstractA large number of epidemics, including COVID-19 and SARS, quickly swept the world and claimed the precious lives of large numbers of people. Due to the concealment and rapid spread of the virus, it is difficult to track down individuals with mild or asymptomatic symptoms with limited human resources. Building a low-cost and real-time epidemic early warning system to identify individuals who have been in contact with infected individuals and determine whether they need to be quarantined is an effective means to mitigate the spread of the epidemic. In this paper, we propose a smartphone-based zero-effort epidemic warning method for mitigating epidemic propagation. Firstly, we recognize epidemic-related voice activity relevant to epidemics spread by hierarchical attention mechanism and temporal convolutional network. Subsequently, we estimate the social distance between users through sensors built-in smartphone. Furthermore, we combine Wi-Fi network logs and social distance to comprehensively judge whether there is spatiotemporal contact between users and determine the duration of contact. Finally, we estimate infection risk based on epidemic-related vocal activity, social distance, and contact time. We conduct a large number of well-designed experiments in typical scenarios to fully verify the proposed method. The proposed method does not rely on any additional infrastructure and historical training data, which is conducive to integration with epidemic prevention and control systems and large-scale applications.
Funder
Key Technologies Research and Development Program
Postdoctoral Research Foundation of China
Basic and Applied Basic Research Foundation of Guangdong Province
Special Project for Research and Development in Key areas of Guangdong Province
Central Guidance on Local Science and Technology Development Fund of ShanXi Province
Fundamental Research Funds for Central Universities
Fundamental Research Funds for Central Universities of the Central South University
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
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