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(1) Background: Detecting long-lie incidents-where individuals remain immobile after a fall-is essential for timely intervention and preventing severe health consequences. However, most existing systems focus only on fall detection, neglect post-fall monitoring, and raise privacy concerns, especially in real-time, non-invasive applications; (2) Methods: This study proposes a lightweight, privacy-preserving, long-lie detection system utilizing thermal imaging and a soft-voting ensemble classifier. A low-resolution thermal camera captured simulated falls and activities of daily living (ADL) performed by ten healthy participants. Human pose keypoints were extracted using MediaPipe, followed by the computation of five handcrafted postural features. The top three classifiers-automatically selected based on cross-validation performance-formed the soft-voting ensemble. Long-lie conditions were identified through post-fall immobility monitoring over a defined period, using rule-based logic on posture stability and duration; (3) Results: The ensemble model achieved high classification performance with accuracy, precision, recall, and an F1 score of 0.98. Real-time deployment on a Raspberry Pi 5 demonstrated the system is capable of accurately detecting long-lie incidents based on continuous monitoring over 15 min, with minimal posture variation; (4) Conclusion: The proposed system introduces a novel approach to long-lie detection by integrating privacy-aware sensing, interpretable posture-based features, and efficient edge computing. It demonstrates strong potential for deployment in homecare settings. Future work includes validation with older adults and integration of vital sign monitoring for comprehensive assessment.
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http://dx.doi.org/10.3390/s25123836 | DOI Listing |
Sensors (Basel)
June 2025
School of Electronic and Electrical Engineering, University of Leeds, Leeds LS2 9JT, UK.
(1) Background: Detecting long-lie incidents-where individuals remain immobile after a fall-is essential for timely intervention and preventing severe health consequences. However, most existing systems focus only on fall detection, neglect post-fall monitoring, and raise privacy concerns, especially in real-time, non-invasive applications; (2) Methods: This study proposes a lightweight, privacy-preserving, long-lie detection system utilizing thermal imaging and a soft-voting ensemble classifier. A low-resolution thermal camera captured simulated falls and activities of daily living (ADL) performed by ten healthy participants.
View Article and Find Full Text PDFDisabil Rehabil
December 2022
University of Exeter Medical School, University of Exeter, Exeter, UK.
Purpose: Hemiparesis and physical deconditioning following stroke lead to an increase in falls, which many individuals cannot get up from. Teaching stroke survivors to independently get off the floor (IGO) might mitigate long-lie complications. IGO was taught as part of a community-based, functional rehabilitation training programme (ReTrain).
View Article and Find Full Text PDFBr Paramed J
September 2020
Southern GP Federation Support Unit ORCID iD: https://orcid.org/0000-0003-2402-021X.
Background: Falls in older populations constitute a large proportion of the workload for UK ambulance services, and cost the NHS over £2.3 billion per year. A large proportion of older fallers are not conveyed to an emergency department (ED), representing a vulnerable group of patients.
View Article and Find Full Text PDFJ Biomech Eng
August 2019
Department of Biomechatronic Engineering,College of Biotechnology and Bioengineering, Sungkyunkwan University,2066 Seoburo,Jangangu,Suwon, Gyeonggi 16419, South
Pre-impact fall detection can send alarm service faster to reduce long-lie conditions and decrease the risk of hospitalization. Detecting various types of fall to determine the impact site or direction prior to impact is important because it increases the chance of decreasing the incidence or severity of fall-related injuries. In this study, a robust pre-impact fall detection model was developed to classify various activities and falls as multiclass and its performance was compared with the performance of previous developed models.
View Article and Find Full Text PDFAnnu Int Conf IEEE Eng Med Biol Soc
April 2009
CAALYX FP6 project, Wireless Access Research Centre, Department of Electronic and Computer Engineering, University of Limerick, Ireland.
A fall detection system and algorithm, incorporated into a custom designed garment has been developed. The developed fall detection system uses a tri-axial accelerometer to detect impacts and monitor posture. This sensor is attached to a custom designed vest, designed to be worn by the elderly person under clothing.
View Article and Find Full Text PDF