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Data Analysis of Anti-Snoring Intervention Study
Within the SOMNOMAT project we are developing smart beds which acquire physiological signals and react to them by providing a suitable intervention, such as positional therapy for snorers. To test our beds a sleep study was carried out. We are looking for two students to help analyze the sound data.
A good night’s sleep is one of the most important factors influencing health and wellbeing. However, a lot of people have difficulties relaxing after a stressful day. Other people snore, disrupting not only their sleep, but also the sleep of their bed partner.
Within the SOMNOMAT project we are developing smart beds which acquire physiological signals from the sleeper and react to them by providing a suitable intervention. One such intervention is positional therapy for snorers.
To test our beds a sleep study was carried out with 6 non-snorers and 6 snorers.
A good night’s sleep is one of the most important factors influencing health and wellbeing. However, a lot of people have difficulties relaxing after a stressful day. Other people snore, disrupting not only their sleep, but also the sleep of their bed partner. Within the SOMNOMAT project we are developing smart beds which acquire physiological signals from the sleeper and react to them by providing a suitable intervention. One such intervention is positional therapy for snorers. To test our beds a sleep study was carried out with 6 non-snorers and 6 snorers.
We are looking for two motivated students who will help us analyze the collected sound data. More concretely, this implies visual inspection of the sound intensity over time and categorization of any occurring sounds by listening to them.
We are looking for two motivated students who will help us analyze the collected sound data. More concretely, this implies visual inspection of the sound intensity over time and categorization of any occurring sounds by listening to them.
Dr.-Ing. Elisabeth Wilhelm, Elisabeth.wilhelm@hest.ethz.ch
Dr.-Ing. Elisabeth Wilhelm, Elisabeth.wilhelm@hest.ethz.ch