This study investigates the feasibility of using radar-based deep learning models to estimate gait smoothness, a key biomechanical parameter associated with motor control and rehabilitation outcomes. Traditional gait assessment methods, such as optoelectronic motion capture and wearable sensors, are often costly, intrusive, or require controlled environments. Radar-based approaches offer a promising alternative by enabling contactless, continuous monitoring of human movement. In this study, sixty healthy participants walked on a treadmill at three different speeds (2, 4, and 6 km/h) while their three-dimensional body center-of-mass (BCoM) velocity was recorded using an optoelectronic system, which served as the ground truth for smoothness estimation. Simultaneously, micro-Doppler radar signals were acquired and processed into spectrograms representing movement dynamics. Nine convolutional neural networks were trained to predict BCoM smoothness from radar-derived decibel-intensity matrices, with a dedicated model for each combination of walking speed and movement component (anteroposterior, mediolateral, and craniocaudal). The models achieved mean absolute percentage errors below 10% in most conditions, except for the anteroposterior component at 6 km/h, where error rates reached 14.4%. These findings suggest that radar-based deep learning can effectively estimate gait smoothness, particularly at lower walking speeds, and holds potential for real-world applications in clinical gait assessment and rehabilitation monitoring. Despite promising results, challenges remain regarding model generalization, especially at higher speeds where gait variability increases. Future research should explore more advanced deep learning architectures, such as residual networks or attention-based models, and extend the approach to clinical populations with neurological or musculoskeletal disorders. If validated in diverse conditions, radar-based smoothness estimation could provide a novel, unobtrusive tool for assessing gait quality in both clinical and everyday settings.

(2025). Radar-Based Deep Learning for Gait Smoothness Estimation: A Feasibility Study . Retrieved from https://hdl.handle.net/10446/310525

Radar-Based Deep Learning for Gait Smoothness Estimation: A Feasibility Study

Bergamini, Elena
2025-01-01

Abstract

This study investigates the feasibility of using radar-based deep learning models to estimate gait smoothness, a key biomechanical parameter associated with motor control and rehabilitation outcomes. Traditional gait assessment methods, such as optoelectronic motion capture and wearable sensors, are often costly, intrusive, or require controlled environments. Radar-based approaches offer a promising alternative by enabling contactless, continuous monitoring of human movement. In this study, sixty healthy participants walked on a treadmill at three different speeds (2, 4, and 6 km/h) while their three-dimensional body center-of-mass (BCoM) velocity was recorded using an optoelectronic system, which served as the ground truth for smoothness estimation. Simultaneously, micro-Doppler radar signals were acquired and processed into spectrograms representing movement dynamics. Nine convolutional neural networks were trained to predict BCoM smoothness from radar-derived decibel-intensity matrices, with a dedicated model for each combination of walking speed and movement component (anteroposterior, mediolateral, and craniocaudal). The models achieved mean absolute percentage errors below 10% in most conditions, except for the anteroposterior component at 6 km/h, where error rates reached 14.4%. These findings suggest that radar-based deep learning can effectively estimate gait smoothness, particularly at lower walking speeds, and holds potential for real-world applications in clinical gait assessment and rehabilitation monitoring. Despite promising results, challenges remain regarding model generalization, especially at higher speeds where gait variability increases. Future research should explore more advanced deep learning architectures, such as residual networks or attention-based models, and extend the approach to clinical populations with neurological or musculoskeletal disorders. If validated in diverse conditions, radar-based smoothness estimation could provide a novel, unobtrusive tool for assessing gait quality in both clinical and everyday settings.
2025
Inglese
2025 IEEE Medical Measurements & Applications (MeMeA)
9798331523473
2025
1
4
online
United States
Piscataway
IEEE (Institute of Electrical and Electronics Engineers)
esperti anonimi
MeMeA 2025: 20th IEEE International Symposium on Medical Measurements and Applications, Chania, Greece, 28-30 May 2025
20th
Chania, Greece
28-30 May 2025
IEEE
IEEE Instrumentation and Measurement Society
internazionale
contributo
Settore IBIO-01/A - Bioingegneria
Body center of mass; Deep learning; Radar; Smoothness
   Contactless And ReliAble MovEment anaLysis with miLlimeter-waves rAdars
   CARAMELLA
   MUR - MINISTERO DELL'UNIVERSITA' E DELLA RICERCA - Segretariato generale Direzione generale della ricerca - Ufficio IV
   2022TLSWHM_01
info:eu-repo/semantics/conferenceObject
5
Brasiliano, Paolo; Carcione, Fabrizio Lorenzo; Pavei, Gaspare; Cardillo, Emanuele; Bergamini, Elena
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2025). Radar-Based Deep Learning for Gait Smoothness Estimation: A Feasibility Study . Retrieved from https://hdl.handle.net/10446/310525
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