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Titlebook: Body Area Networks. Smart IoT and Big Data for Intelligent Health; 15th EAI Internation Muhammad Mahtab Alam,Matti Hämäläinen,Yannick Le M

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发表于 2025-3-21 17:38:57 | 显示全部楼层 |阅读模式
期刊全称Body Area Networks. Smart IoT and Big Data for Intelligent Health
期刊简称15th EAI Internation
影响因子2023Muhammad Mahtab Alam,Matti Hämäläinen,Yannick Le M
视频video
学科分类Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engi
图书封面Titlebook: Body Area Networks. Smart IoT and Big Data for Intelligent Health; 15th EAI Internation Muhammad Mahtab Alam,Matti Hämäläinen,Yannick Le M
影响因子This book constitutes the refereed post-conference proceedings of the 15.th .International Conference on Body Area Networks, BodyNets 2020, held in Tallinn, Estonia, in October 2020. The conference was held virtually due to the COVID-19 pandemic.The 15 papers presented were selected from 30 submissions and issue new technologies to provide trustable measuring and communications mechanisms from the data source to medical health databases. Wireless body area networks (WBAN) are one major element in this process. Not only on-body devices but also technologies providing information from inside a body are in the focus of this conference. Dependable communications combined with accurate localization and behavior analysis will benefit WBAN technology and make the healthcare processes more effective..
Pindex Conference proceedings 2020
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On the UWB in-Body Propagation Measurements Using Pork Meaty, by measurements, the in-body channel characteristics using different types of pork meat piece having different fat and muscle compositions. It was found that path loss is clearly higher with the pork meat having separate skin, fat, and muscle layers compared to the pork meat having interlaced fat
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BSNCloud: Cloud-Centered Wireless Body Sensor Data Collection, Streaming, and Analytics Systemincorporated four key components in the cloud server: data repository, algorithm repository, machine learning engine, and web portal. A prototype has been implemented with preliminary performance evaluation. Results show that the system is promising in its full utilization of the high performance co
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Solving Generic Decision Problems by in-Message Computation in DNA-Based Molecular Nanonetworksematical problems that can be modeled as boolean formulas using DNA-based nanonetworks by in-message computation. The computation itself is encoded in the assembly process of a message. This avoids often-stated space constraints for computations at the nanoscale, as the medium of transportation is c
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Real-Time Human Activity Recognition Using Textile-Based Sensorsformance of the machine learning models is tested on unseen activity data. The obtained results showed the effectiveness of our approach by achieving high accuracy up to 83.1% on selected human activities in real-time.
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Extraction of Respiratory Signals and Respiratory Rates from the Photoplethysmogramrm both children and adults in different clinical setting. Compared with that of existing method in the literature, the average absolute error percentage (AAEP) of the proposed algorithm is less than 3.72%, which demonstrated that our presented AC-AR bring a significant improvement in accuracy.
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