Abstract
The world is expecting an aging population and shortage of healthcare professionals. This poses the problem of providing a safe and dignified life for the elderly. Technological solutions involving cameras can contribute to safety, comfort and efficient emergency responses, but they are invasive of privacy. We use 'Griddy', a prototype with a Panasonic Grid-EYE, a low-resolution infrared thermopile array sensor, which offers more privacy. Mounted over a bed, it can determine if the user is on the bed or not without human interaction. For this purpose, two datasets were captured, one (480 images) under constant conditions, and a second one (200 images) under different variations such as use of a duvet, sleeping with a pet, or increased room temperature. We test three machine learning algorithms: Support Vector Machines (SVM), k-Nearest Neighbors (k-NN) and Neural Network (NN). With 10-fold cross validation, the highest accuracy in the main dataset is for both SVM and k-NN (99%). The results with variable data show a lower reliability under certain circumstances, highlighting the need of extra work to meet the challenge of variations in the environment.
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CITATION STYLE
Josse, E., Nerborg, A., Hernandez-Diaz, K., & Alonso-Fernandez, F. (2021). In-Bed Person Monitoring Using Thermal Infrared Sensors. In Proceedings of the 16th Conference on Computer Science and Intelligence Systems, FedCSIS 2021 (pp. 121–125). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.15439/2021F15
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