2023
DOI: 10.3390/s23229194
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CNN-Based Self-Attention Weight Extraction for Fall Event Prediction Using Balance Test Score

Youness El Marhraoui,
Stéphane Bouilland,
Mehdi Boukallel
et al.

Abstract: Injury, hospitalization, and even death are common consequences of falling for elderly people. Therefore, early and robust identification of people at risk of recurrent falling is crucial from a preventive point of view. This study aims to evaluate the effectiveness of an interpretable semi-supervised approach in identifying individuals at risk of falls by using the data provided by ankle-mounted IMU sensors. Our method benefits from the cause–effect link between a fall event and balance ability to pinpoint th… Show more

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Cited by 1 publication
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“…The authors of [31] explored the integration of CNN-based self-attention models to predict fall events by analyzing balance test scores. Their study utilizes a semi-supervised learning approach that leverages data from ankle-mounted IMU sensors (Analog Devices Inc., Wilmington, MA, USA) to detect high-risk fall moments.…”
Section: Explainable and Interpretable Fall Detectionmentioning
confidence: 99%
“…The authors of [31] explored the integration of CNN-based self-attention models to predict fall events by analyzing balance test scores. Their study utilizes a semi-supervised learning approach that leverages data from ankle-mounted IMU sensors (Analog Devices Inc., Wilmington, MA, USA) to detect high-risk fall moments.…”
Section: Explainable and Interpretable Fall Detectionmentioning
confidence: 99%