Non-contact Multimodal Indoor Human Monitoring Systems: A Survey
Le Ngu Nguyen, Praneeth Susarla, Anirban Mukherjee, Manuel, Lage Ca\~nellas, Constantino \'Alvarez Casado, Xiaoting Wu and, Olli~Silv\'en, Dinesh Babu Jayagopi, Miguel Bordallo L\'opez

TL;DR
This survey reviews non-contact multimodal indoor human monitoring systems, emphasizing their applications in elderly care, by analyzing sensor technologies, data fusion methods, and datasets to improve accuracy and robustness.
Contribution
It provides a comprehensive overview of non-contact multimodal monitoring techniques, feature extraction, data fusion, and datasets, highlighting their relevance in elderly care applications.
Findings
Radio and camera-based sensors are key in non-contact monitoring.
Multimodal data fusion improves detection accuracy.
Existing datasets support diverse human monitoring tasks.
Abstract
Indoor human monitoring systems leverage a wide range of sensors, including cameras, radio devices, and inertial measurement units, to collect extensive data from users and the environment. These sensors contribute diverse data modalities, such as video feeds from cameras, received signal strength indicators and channel state information from WiFi devices, and three-axis acceleration data from inertial measurement units. In this context, we present a comprehensive survey of multimodal approaches for indoor human monitoring systems, with a specific focus on their relevance in elderly care. Our survey primarily highlights non-contact technologies, particularly cameras and radio devices, as key components in the development of indoor human monitoring systems. Throughout this article, we explore well-established techniques for extracting features from multimodal data sources. Our…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Context-Aware Activity Recognition Systems
MethodsFocus
