Privacy-Preserving Multi-Stage Fall Detection Framework with Semi-supervised Federated Learning and Robotic Vision Confirmation
Seyed Alireza Rahimi Azghadi, Truong-Thanh-Hung Nguyen, Helene Fournier, Monica Wachowicz, Rene Richard, Francis Palma, Hung Cao

TL;DR
This paper presents a privacy-preserving, multi-system fall detection framework combining federated learning, indoor localization, and robotic vision, achieving near-perfect accuracy for timely and reliable detection in older adults.
Contribution
It introduces a novel multi-stage fall detection framework integrating federated learning, localization, and vision, enhancing privacy and accuracy over existing methods.
Findings
SF2D achieves 99.19% accuracy
Vision-based detection reaches 96.3% accuracy
Overall system achieves 99.99% accuracy
Abstract
The aging population is growing rapidly, and so is the danger of falls in older adults. A major cause of injury is falling, and detection in time can greatly save medical expenses and recovery time. However, to provide timely intervention and avoid unnecessary alarms, detection systems must be effective and reliable while addressing privacy concerns regarding the user. In this work, we propose a framework for detecting falls using several complementary systems: a semi-supervised federated learning-based fall detection system (SF2D), an indoor localization and navigation system, and a vision-based human fall recognition system. A wearable device and an edge device identify a fall scenario in the first system. On top of that, the second system uses an indoor localization technique first to localize the fall location and then navigate a robot to inspect the scenario. A vision-based…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · IoT and Edge/Fog Computing · Privacy-Preserving Technologies in Data
