During the Coronavirus Disease 2019 (COVID-19) pandemic, non-contact health monitoring and human activity detection by various sensors have attracted tremendous attention. Robotic monitoring will minimize the threat to health providers during the COVID-19 pandemic period. Improving the monitoring model's performance and generalization is a critical but difficult task. This paper constructs an epidemic monitoring architecture based on multi-sensor information fusion and applies it to medical robot services. We propose a gated recurrent unit model based on a genetic algorithm (GA-GRU) to realize effective feature selection and improve the effectiveness and accuracy of wireless sensor networks (WSNs).
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Title
Architecture Design Numerical Result Indoor Wireless Sensor Network Data Sets Conclusions
Resource Type
Poster
Event
Student Scholar Symposium & Faculty Research Showcase (University of West Florida, Pensacola, Florida, 04/20/2023)
Contributors
Jia Liu (General Contributor) - University of West Florida, Mathematics and Statistics
Publisher
University of West Florida Libraries; Argo Scholar Commons
Format
pdf
Copyright
Permission granted to the University of West Florida Libraries by the author to digitize and/or display this information for non-profit research and educational purposes. Any reuse of this item in excess of fair use or other copyright exemptions requires the permission of the copyright holder.
Identifiers
99380477596506600
Academic Unit
Mathematics and Statistics; 2023 Student Scholars Symposium and Faculty Research Showcase; Office of Undergraduate Research; Hal Marcus College of Science and Engineering
Language
English
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Architecture Design Numerical Result Indoor Wireless Sensor Network Data Sets Conclusions