Human stability assessment and fall detection based on dynamic descriptors

Abstract Fall detection systems use a number of different technologies to achieve their goals. This way, they contribute to better life conditions for the elderly community. The artificial vision is one of these technologies and, within this field, it has gained momentum over the course of the last...

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Main Authors: Jesús Gutiérrez, Sergio Martin, Victor Rodriguez
Format: Article
Language:English
Published: Wiley 2023-09-01
Series:IET Image Processing
Subjects:
Online Access:https://doi.org/10.1049/ipr2.12847
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author Jesús Gutiérrez
Sergio Martin
Victor Rodriguez
author_facet Jesús Gutiérrez
Sergio Martin
Victor Rodriguez
author_sort Jesús Gutiérrez
collection DOAJ
description Abstract Fall detection systems use a number of different technologies to achieve their goals. This way, they contribute to better life conditions for the elderly community. The artificial vision is one of these technologies and, within this field, it has gained momentum over the course of the last few years as a consequence of the incorporation of different artificial neural networks (ANN's). These ANN's share a common characteristic, they are used to extract descriptors from images and video clips that, properly processed, will determine whether a fall has taken place. These descriptors, which capture kinematic features associated with the fall, are inferred from datasets recorded by young volunteers or actors who simulate falls. Systems based on this concept offer excellent performances in tests which use that kind of datasets. However, given the well‐documented differences between these falls and the real ones, concerns about system performances when processing falls of elderly people are raised. This work implements an alternative approach to the classical use of kinematic descriptors. To do it, for the first time to the best of the authors’ knowledge, the authors propose the introduction of human dynamic stability descriptors used in other fields to determine whether a fall has taken place. These descriptors approach the human body in terms of balance and stability; this way, differences between real and simulated falls become irrelevant, as all falls are a direct result of fails in the continuous effort of the body to keep balance, regardless of other considerations. The descriptors are determined by using the information provided by a neural network able to estimate the body centre of mass and the feet projections onto the ground plane, as well as the feet contact status. The theory behind this new approach and its validity is studied in this article with very promising results, as it is able to match or over exceed the performances of previous systems using kinematic descriptors employing available data and, given the independence of this approach from the conditions of the fall, it has the potential to have a better behaviour than classic systems when facing falls of elderly people.
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spelling doaj.art-dc2238ddf01d481c91bc9b13f49ccaa12023-09-04T10:54:49ZengWileyIET Image Processing1751-96591751-96672023-09-0117113177319510.1049/ipr2.12847Human stability assessment and fall detection based on dynamic descriptorsJesús Gutiérrez0Sergio Martin1Victor Rodriguez2Electrical and Computer Engineering Department Juan del Rosal, 12 Universidad Nacional de Educación a Distancia (UNED) MadridSpainElectrical and Computer Engineering Department Juan del Rosal, 12 Universidad Nacional de Educación a Distancia (UNED) MadridSpainEduQTech E.U. Politécnica de Zaragoza María de Luna, 3 ZaragozaSpainAbstract Fall detection systems use a number of different technologies to achieve their goals. This way, they contribute to better life conditions for the elderly community. The artificial vision is one of these technologies and, within this field, it has gained momentum over the course of the last few years as a consequence of the incorporation of different artificial neural networks (ANN's). These ANN's share a common characteristic, they are used to extract descriptors from images and video clips that, properly processed, will determine whether a fall has taken place. These descriptors, which capture kinematic features associated with the fall, are inferred from datasets recorded by young volunteers or actors who simulate falls. Systems based on this concept offer excellent performances in tests which use that kind of datasets. However, given the well‐documented differences between these falls and the real ones, concerns about system performances when processing falls of elderly people are raised. This work implements an alternative approach to the classical use of kinematic descriptors. To do it, for the first time to the best of the authors’ knowledge, the authors propose the introduction of human dynamic stability descriptors used in other fields to determine whether a fall has taken place. These descriptors approach the human body in terms of balance and stability; this way, differences between real and simulated falls become irrelevant, as all falls are a direct result of fails in the continuous effort of the body to keep balance, regardless of other considerations. The descriptors are determined by using the information provided by a neural network able to estimate the body centre of mass and the feet projections onto the ground plane, as well as the feet contact status. The theory behind this new approach and its validity is studied in this article with very promising results, as it is able to match or over exceed the performances of previous systems using kinematic descriptors employing available data and, given the independence of this approach from the conditions of the fall, it has the potential to have a better behaviour than classic systems when facing falls of elderly people.https://doi.org/10.1049/ipr2.12847convolutional neural netsimage processing
spellingShingle Jesús Gutiérrez
Sergio Martin
Victor Rodriguez
Human stability assessment and fall detection based on dynamic descriptors
IET Image Processing
convolutional neural nets
image processing
title Human stability assessment and fall detection based on dynamic descriptors
title_full Human stability assessment and fall detection based on dynamic descriptors
title_fullStr Human stability assessment and fall detection based on dynamic descriptors
title_full_unstemmed Human stability assessment and fall detection based on dynamic descriptors
title_short Human stability assessment and fall detection based on dynamic descriptors
title_sort human stability assessment and fall detection based on dynamic descriptors
topic convolutional neural nets
image processing
url https://doi.org/10.1049/ipr2.12847
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AT sergiomartin humanstabilityassessmentandfalldetectionbasedondynamicdescriptors
AT victorrodriguez humanstabilityassessmentandfalldetectionbasedondynamicdescriptors