Publicación:  Monitoring vital signs at rest while using channel state information of wi-fi signals and artificial intelligence tools /
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Breathing and heart rate are vital signs that might help identifying  pathological conditions by its monitoring. This master’s thesis presents    a system for monitoring breathing and heart rate, which combines con-  ventional Channel State Information sensing approaches with Machine    Learning techniques to provide a reliable monitoring. Also, a new sen-  sitive subcarrier selection method, which is an important step for pro-  cessing Channel State Information data, based on Hilbert Transform is    presented. Along with the system’s description, this thesis provides the  base theory for understanding each system’s component and the task  that each component does. An exhaustive analysis was also performed  and presented in order to understand Channel State Information data  as well as the processing of data for vital signs monitoring. Results  show that a reliable breathing rate monitoring can be achieved and  raise questions about heart rate monitoring which are also answered in  the same chapter.
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Inteligencia artificial, Tesis y disertaciones académicas, lemb
