Multidimensional ground reaction forces and moments from wearable sensor accelerations via deep learning

03/18/2019
by   William R. Johnson, et al.
0

Objective: Monitoring athlete internal workload exposure, including prevention of catastrophic non-contact knee injuries, relies on the existence of a custom early-warning detection system. This system must be able to estimate accurate, reliable, and valid musculoskeletal joint loads, for sporting maneuvers in near real-time and during match play. However, current methods are constrained to laboratory instrumentation, are labor and cost intensive, and require highly trained specialist knowledge, thereby limiting their ecological validity and volume deployment. Methods: Here we show that kinematic data obtained from wearable sensor accelerometers, in lieu of embedded force platforms, can leverage recent supervised learning techniques to predict in-game near real-time multidimensional ground reaction forces and moments (GRF/M). Competing convolutional neural network (CNN) deep learning models were trained using laboratory-derived stance phase GRF/M data and simulated sensor accelerations for running and sidestepping maneuvers derived from nearly half a million legacy motion trials. Then, predictions were made from each model driven by five sensor accelerations recorded during independent inter-laboratory data capture sessions. Results: Despite adversarial conditions, the proposed deep learning workbench achieved correlations for vertical GRF above 0.96 for running. Conclusion: The lessons learned from this study will facilitate the use of wearable sensors in conjunction with deep learning to accurately estimate near real-time on-field GRF/M. Significance: Coaching, medical, and allied health staff can use this technology to monitor a range of joint loading indicators during game play, with the ultimate aim to minimize the occurrence of non-contact injuries in elite and community-level sports.

READ FULL TEXT
research
09/21/2018

On-field player workload exposure and knee injury risk monitoring via deep learning

In sports analytics, an understanding of accurate on-field 3D knee joint...
research
08/09/2022

UnderPressure: Deep Learning for Foot Contact Detection, Ground Reaction Force Estimation and Footskate Cleanup

Human motion synthesis and editing are essential to many applications li...
research
09/25/2020

Monitoring My Dehydration: A Non-Invasive Dehydration Alert System Using Electrodermal Activity

Staying hydrated and drinking fluids is extremely crucial to stay health...
research
01/16/2021

Wearable Sensors for Spatio-Temporal Grip Force Profiling

Wearable biosensor technology enables real-time, convenient, and continu...
research
11/11/2020

Wearable Sensors for Individual Grip Force Profiling

Biosensors and wearable sensor systems with transmitting capabilities ar...
research
07/17/2020

Weakly-supervised Learning of Human Dynamics

This paper proposes a weakly-supervised learning framework for dynamics ...

Please sign up or login with your details

Forgot password? Click here to reset