The aging population is rapidly growing, increasing the demand for innovative solutions to support elderly individuals while minimizing the burden on caregivers. This paper presents the Age-SenseAI project, a novel measurement ecosystem designed to monitor comfort and activities in multi-resident environments. The system integrates a network of non-invasive environmental and physiological sensors, combined with Artificial Intelligence (AI) and data fusion techniques, to assess daily activities, indoor comfort, and potential health risks. A co-design approach involving professionals was adopted to define technical requirements, ensuring compliance and ethical considerations. The proposed sensor network collects real-Time data, enabling personalized comfort assessments and detection of behaviour. Two primary use cases were developed: Activity recognition in multi-resident contexts and indoor comfort assessment, integrating both objective environmental parameters and subjective user feedback. The architecture leverages cloud-based processing and AI-driven analytics to provide real-Time insights and adaptive control mechanisms, enhancing elderly autonomy and safety. Future research will focus on improving personalization, deep learning models, and validating the ecosystem in real-world multi-resident scenarios. The Age-SenseAI project represents a significant step toward scalable, intelligent monitoring solutions for elderly care.

Development of a Sensor-Based Ecosystem for Measuring Comfort and Activities in a Multi-Resident Context: the Age-SenseAI Project / Casaccia, Sara; Ciuffreda, Ilaria; Meletani, Sara; Caponetto, Riccardo; Monteriù, Andrea; Gambi, Ennio; Burattini, Laura; Marinelli, Luca; Revel, Gian Marco. - (2025), pp. 500-504. ( 4th IEEE International Workshop on Metrology for Living Environment, MetroLivEnv 2025 Venezia, Italy 11-13 June 2025) [10.1109/metrolivenv64961.2025.11107110].

Development of a Sensor-Based Ecosystem for Measuring Comfort and Activities in a Multi-Resident Context: the Age-SenseAI Project

Casaccia, Sara;Ciuffreda, Ilaria;Meletani, Sara;Monteriù, Andrea;Gambi, Ennio;Burattini, Laura;Marinelli, Luca;Revel, Gian Marco
2025-01-01

Abstract

The aging population is rapidly growing, increasing the demand for innovative solutions to support elderly individuals while minimizing the burden on caregivers. This paper presents the Age-SenseAI project, a novel measurement ecosystem designed to monitor comfort and activities in multi-resident environments. The system integrates a network of non-invasive environmental and physiological sensors, combined with Artificial Intelligence (AI) and data fusion techniques, to assess daily activities, indoor comfort, and potential health risks. A co-design approach involving professionals was adopted to define technical requirements, ensuring compliance and ethical considerations. The proposed sensor network collects real-Time data, enabling personalized comfort assessments and detection of behaviour. Two primary use cases were developed: Activity recognition in multi-resident contexts and indoor comfort assessment, integrating both objective environmental parameters and subjective user feedback. The architecture leverages cloud-based processing and AI-driven analytics to provide real-Time insights and adaptive control mechanisms, enhancing elderly autonomy and safety. Future research will focus on improving personalization, deep learning models, and validating the ecosystem in real-world multi-resident scenarios. The Age-SenseAI project represents a significant step toward scalable, intelligent monitoring solutions for elderly care.
2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/347850
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