The demand for improved healthcare, coupled with increasing life expectancy and a growing elderly population, alongside resource constraints, necessitates the implementation of a 24/7 remote monitoring system equipped with an accurate risk prediction process. This process should forecast potential risks for individuals, enabling early detection and remote alerts to promptly alert healthcare providers and individual caregivers, thereby enhancing the well-being of those under care.
A Japanese technology owner has developed a Time-of-Flight (ToF) sensor technology, characterised by executing a risk prediction process to predict risks for the monitored individuals based on presence range and posture. Unlike conventional camera-based systems, the proposed technology emphasises the privacy of the monitored individual by abstaining from capturing actual photos or images. Through the implementation of a proprietary artificial intelligence (AI) algorithm, it can discern whether the individual under observation is absent from the bed, lying flat on it, sitting at its edge, or lying on the floor next to the bed. A web-based user interface had been developed to provide healthcare professionals various degrees of warning, e.g., patient at safe zone, gray zone, caution zone or bed edge zone.
The technology owner is looking to work with healthcare providers, agencies or developers providing housing for the elderly, or technology companies for test bedding trials, as well as research and development collaborations to customise the technology for specific use cases.
Patient/ Elderly Fall Management:
The technology can be adapted to be used for object tracking, human presence detection, etc.
The technology is low-cost and low-power consumption, lightweight, and easy to install. The UVP includes: