Publication | Closed Access
Monitoring and Prediction of Mood in Elderly People during Daily Life Activities
11
Citations
23
References
2019
Year
Unknown Venue
Wearable SystemDaily Life ActivitiesEngineeringAgingMachine LearningIntelligent Wearable SystemAffective NeuroscienceWearable TechnologyPsychologySocial SciencesElderly PeopleHealthy AgingData ScienceMood SymptomAffective ComputingBehavioral SciencesAssistive TechnologyPsychiatryGeriatricsDepressionMood SpectrumMobile SensingMental Health MonitoringHealth MonitoringActive AgeingEmotionWearable SensorMood States
We present an intelligent wearable system to monitor and predict mood states of elderly people during their daily life activities. Our system is composed of a wristband to record different physiological activities together with a mobile app for ecological momentary assessment (EMA). Machine learning is used to train a classifier to automatically predict different mood states based on the smart band only. Our approach shows promising results on mood accuracy and provides results comparable with the state of the art in the specific detection of happiness and activeness.
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