ReCognizing SUspect and PredictiNg ThE SpRead of Contagion Based on Mobile Phone LoCation DaTa (COUNTERACT): A system of identifying COVID-19 infectious and hazardous sites, detecting disease outbreaks based on the internet of things, edge computing, and artificial intelligence
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Prosanta Gope | Sharnil Pandya | Shubhankar Majumdar | Muhammad Awais | Hemant Ghayvat | P. Gope | H. Ghayvat | Sharnil Pandya | M. Awais | S. Majumdar
[1] B. Napoletano,et al. Spatial analysis and GIS in the study of COVID-19. A review , 2020, Science of The Total Environment.
[2] Renate Klar,et al. The ethics of COVID-19 tracking apps – challenges and voluntariness , 2020 .
[3] Simon Elias Bibri,et al. The IoT for smart sustainable cities of the future: An analytical framework for sensor-based big data applications for environmental sustainability , 2018 .
[4] Mianxiong Dong,et al. Learning IoT in Edge: Deep Learning for the Internet of Things with Edge Computing , 2018, IEEE Network.
[5] M. A. Habib,et al. Smartphone and daily travel: How the use of smartphone applications affect travel decisions , 2020 .
[6] Julio Cezar Soares Silva,et al. A city cluster risk-based approach for Sars-CoV-2 and isolation barriers based on anonymized mobile phone users' location data , 2020, Sustainable Cities and Society.
[7] G. Cencetti,et al. Using real-world contact networks to quantify theeffectiveness of digital contact tracing and isolation strategies for Covid-19 pandemic , 2020, medRxiv.
[8] Constantine E. Kontokosta,et al. Bias in smart city governance: How socio-spatial disparities in 311 complaint behavior impact the fairness of data-driven decisions , 2021 .
[9] Roshan Fernandes,et al. A New Approach to Predict user Mobility Using Semantic Analysis and Machine Learning , 2017, Journal of Medical Systems.
[10] Georgios Kambourakis,et al. Demystifying COVID-19 digital contact tracing: A survey on frameworks and mobile apps , 2020, Wireless Communications and Mobile Computing.
[11] P. Kearney,et al. What do patients value as incentives for participation in clinical trials? A pilot discrete choice experiment , 2020 .
[12] M. Jorge Cardoso,et al. Real-time tracking of self-reported symptoms to predict potential COVID-19 , 2020, Nature Medicine.
[13] Rui Zhu,et al. Considering user behavior in free-floating bike sharing system design: A data-informed spatial agent-based model , 2019, Sustainable Cities and Society.
[14] D. Carvalho,et al. A novel predictive mathematical model for COVID-19 pandemic with quarantine, contagion dynamics, and environmentally mediated transmission , 2020, medRxiv.
[15] Georgios Magklaras,et al. A review of information security aspects of the emerging COVID-19 contact tracing mobile phone applications , 2020, HAISA.
[16] Zhiyi Huang,et al. An Effective Data Privacy Protection Algorithm Based on Differential Privacy in Edge Computing , 2019, IEEE Access.
[17] Jason J. Jung,et al. Social big data: Recent achievements and new challenges , 2015, Information Fusion.
[18] D. Skoll,et al. COVID-19 testing and infection surveillance: Is a combined digital contact-tracing and mass-testing solution feasible in the United States? , 2020, Cardiovascular Digital Health Journal.
[19] Airo Hino,et al. COVID-19, digital privacy, and the social limits on data-focused public health responses , 2020, International Journal of Information Management.
[20] Helge Janicke,et al. A Survey of COVID-19 Contact Tracing Apps , 2020, IEEE Access.
[21] Andrew Urbaczewski,et al. Information Technology and the pandemic: a preliminary multinational analysis of the impact of mobile tracking technology on the COVID-19 contagion control , 2020, Eur. J. Inf. Syst..
[22] Kevin Yap,et al. Mobile Health Apps That Help With COVID-19 Management: Scoping Review , 2020, JMIR nursing.