Cavaglia, Maria Sole
(2024)
Enhancing Safe Mobility: Development of a Fall Detection System for Smart Walkers.
[Laurea magistrale], Università di Bologna, Corso di Studio in
Biomedical engineering [LM-DM270] - Cesena, Documento ad accesso riservato.
Documenti full-text disponibili:
Abstract
The World Health Organization estimates 684,000 annual deaths and 37.3 million severe falls, emphasizing
vulnerability in individuals aged 60 and above. Falls not only cause physical injuries but also contribute to
psychological and social challenges, impacting independence and increasing social isolation. Cognitive and
neurological diseases increase the risk of falls in the elderly, necessitating effective fall detection systems.
Near falls, precursors to actual falls, are crucial indicators for predicting risks. Improper use of walking aids,
like canes and walkers, adds to fall risks among older adults. Smart walkers, incorporating advanced
technologies like sensors and actuators, offer a potential solution.
This thesis presents a study integrating an efficient fall detection system into a smart walker, using a multi-sensor setup with a wireless Inertial Measurement Unit sensor, Force-sensitive handlebars, and a Laser Range
Finder sensor. The thesis objectives aim to analyse fall risk factors, assessment, detection, prevention, and
their application for people with dementia. Specifically, a fall detection system based on thresholding
algorithms and inertial sensors was integrated into a smart walker and a dedicated safe experimental protocol
was developed. A real-time gait analysis, facilitated by sensor-specific algorithms, was implemented to provide
clinical insights and tested with 6 able-bodied participants. Several state-of-the-art fall detection algorithms
were compared to evaluate the overall system, achieving an accuracy rate of up to 73.9%.
The development of the multi-sensor setup and real-time algorithm aimed to enhance daily fall detection,
addressing the urgent need for effective fall detection systems in an aging population. The study outcomes
significantly fluctuate depending on the case study, highlighting the need for personalization of the system for
the specific user.
Abstract
The World Health Organization estimates 684,000 annual deaths and 37.3 million severe falls, emphasizing
vulnerability in individuals aged 60 and above. Falls not only cause physical injuries but also contribute to
psychological and social challenges, impacting independence and increasing social isolation. Cognitive and
neurological diseases increase the risk of falls in the elderly, necessitating effective fall detection systems.
Near falls, precursors to actual falls, are crucial indicators for predicting risks. Improper use of walking aids,
like canes and walkers, adds to fall risks among older adults. Smart walkers, incorporating advanced
technologies like sensors and actuators, offer a potential solution.
This thesis presents a study integrating an efficient fall detection system into a smart walker, using a multi-sensor setup with a wireless Inertial Measurement Unit sensor, Force-sensitive handlebars, and a Laser Range
Finder sensor. The thesis objectives aim to analyse fall risk factors, assessment, detection, prevention, and
their application for people with dementia. Specifically, a fall detection system based on thresholding
algorithms and inertial sensors was integrated into a smart walker and a dedicated safe experimental protocol
was developed. A real-time gait analysis, facilitated by sensor-specific algorithms, was implemented to provide
clinical insights and tested with 6 able-bodied participants. Several state-of-the-art fall detection algorithms
were compared to evaluate the overall system, achieving an accuracy rate of up to 73.9%.
The development of the multi-sensor setup and real-time algorithm aimed to enhance daily fall detection,
addressing the urgent need for effective fall detection systems in an aging population. The study outcomes
significantly fluctuate depending on the case study, highlighting the need for personalization of the system for
the specific user.
Tipologia del documento
Tesi di laurea
(Laurea magistrale)
Autore della tesi
Cavaglia, Maria Sole
Relatore della tesi
Correlatore della tesi
Scuola
Corso di studio
Indirizzo
CURRICULUM BIOMEDICAL ENGINEERING FOR NEUROSCIENCE
Ordinamento Cds
DM270
Parole chiave
Falls,Fall risk assessment,Fall prevention,Fall detection,Smart Walker,Multi-sensory integration
Data di discussione della Tesi
14 Marzo 2024
URI
Altri metadati
Tipologia del documento
Tesi di laurea
(NON SPECIFICATO)
Autore della tesi
Cavaglia, Maria Sole
Relatore della tesi
Correlatore della tesi
Scuola
Corso di studio
Indirizzo
CURRICULUM BIOMEDICAL ENGINEERING FOR NEUROSCIENCE
Ordinamento Cds
DM270
Parole chiave
Falls,Fall risk assessment,Fall prevention,Fall detection,Smart Walker,Multi-sensory integration
Data di discussione della Tesi
14 Marzo 2024
URI
Gestione del documento: