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Main Authors: Cartocci, Nicholas, Gkikakis, Antonios E., Caldwell, Darwin G., Ortiz, Jesús
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.24487
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author Cartocci, Nicholas
Gkikakis, Antonios E.
Caldwell, Darwin G.
Ortiz, Jesús
author_facet Cartocci, Nicholas
Gkikakis, Antonios E.
Caldwell, Darwin G.
Ortiz, Jesús
contents Developing a general-purpose wearable real-time fall-detection system is still a challenging task, especially for healthy and strong subjects, such as industrial workers that work in harsh environments. In this work, we present a hybrid approach for fall detection and prevention, which uses the dynamic model of an inverted pendulum to generate simulations of falling that are then fed to a deep learning framework. The output is a signal to activate a fall mitigation mechanism when the subject is at risk of harm. The advantage of this approach is that abstracted models can be used to efficiently generate training data for thousands of different subjects with different falling initial conditions, something that is practically impossible with real experiments. This approach is suitable for a specific type of fall, where the subjects fall without changing their initial configuration significantly, and it is the first step toward a general-purpose wearable device, with the aim of reducing fall-associated injuries in industrial environments, which can improve the safety of workers.
format Preprint
id arxiv_https___arxiv_org_abs_2505_24487
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Real-time Fall Prevention system for the Next-generation of Workers
Cartocci, Nicholas
Gkikakis, Antonios E.
Caldwell, Darwin G.
Ortiz, Jesús
Signal Processing
Machine Learning
Developing a general-purpose wearable real-time fall-detection system is still a challenging task, especially for healthy and strong subjects, such as industrial workers that work in harsh environments. In this work, we present a hybrid approach for fall detection and prevention, which uses the dynamic model of an inverted pendulum to generate simulations of falling that are then fed to a deep learning framework. The output is a signal to activate a fall mitigation mechanism when the subject is at risk of harm. The advantage of this approach is that abstracted models can be used to efficiently generate training data for thousands of different subjects with different falling initial conditions, something that is practically impossible with real experiments. This approach is suitable for a specific type of fall, where the subjects fall without changing their initial configuration significantly, and it is the first step toward a general-purpose wearable device, with the aim of reducing fall-associated injuries in industrial environments, which can improve the safety of workers.
title Real-time Fall Prevention system for the Next-generation of Workers
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2505.24487