ISIT 2024 Workshop on Information-Theoretic Methods for Trustworthy Machine Learning. Athens, Greece. Julio 2024
ACM SIGMETRICS. Venice, Italy. Junio 2024
Workshop on Artificial Intelligence System with Confidential Computing (AISCC 2024), co-located with NDSS Symposium 2024. San Diego, CA, USA. Febrero 2024
Usenix Network and Distributed System Security Symposium. San Diego, California. Febrero 2023
Accidental fall can cause physical injury, fracture and other health complications, especially for elderly people living alone. Aimed to provide timely assistance after the occurrence of falling down, a pre-fall alarm system was proposed. In order to test the reliability of the pre-fall alarm system, eighteen subjects who wore this device on the waist were required to participate in a series of experiments. The acceleration and angular velocity time series extracted from human motion processes were used to describe human motion features. HMM-based SVM classifier was used to determine the maximum separation boundary between falls and Activities of Daily Living (ADLs). The fall detection results showed 94.91% accuracy, 97.22% Sensitivity and 93.75% Specificity. The proposed device can accurately recognize fall events, achieve additional functions, and have the advantages of small size and low power consumption. Based on the findings, this pre-impact fall alarm system with a detection algorithm could potentially be useful for monitoring the state of physical function in elderly population.