Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/40881
Title: Gait Stride Length Estimation Using Embedded Machine Learning
Authors: VERBIEST, Joeri 
BONNECHERE, Bruno 
Saeys, Wim
van de Walle, Patricia
Truijen, Steven
MEYNS, Pieter 
Issue Date: 2023
Publisher: MDPI
Source: SENSORS, 23 (16) (Art N° 7166)
Abstract: Introduction. Spatiotemporal gait parameters, e.g., gait stride length, are measurements that are classically derived from instrumented gait analysis. Today, different solutions are available for gait assessment outside the laboratory, specifically for spatiotemporal gait parameters. Such solutions are wearable devices that comprise an inertial measurement unit (IMU) sensor and a microcontroller (MCU). However, these existing wearable devices are resource-constrained. They contain a processing unit with limited processing and memory capabilities which limit the use of machine learning to estimate spatiotemporal gait parameters directly on the device. The solution for this limitation is embedded machine learning or tiny machine learning (tinyML). This study aims to create a machine-learning model for gait stride length estimation deployable on a microcontroller. Materials and Method. Starting from a dataset consisting of 4467 gait strides from 15 healthy people, measured by IMU sensor, and using state-of-the-art machine learning frameworks and machine learning operations (MLOps) tools, a multilayer 1D convolutional float32 and int8 model for gait stride length estimation was developed. Results. The developed float32 model demonstrated a mean accuracy and precision of 0.23 +/- 4.3 cm, and the int8 model demonstrated a mean accuracy and precision of 0.07 +/- 4.3 cm. The memory usage for the float32 model was 284.5 kB flash and 31.9 kB RAM. The int8 model memory usage was 91.6 kB flash and 13.6 kB RAM. Both models were able to be deployed on a Cortex-M4F 64 MHz microcontroller with 1 MB flash memory and 256 kB RAM. Conclusions. This study shows that estimating gait stride length directly on a microcontroller is feasible and demonstrates the potential of embedded machine learning, or tinyML, in designing wearable sensor devices for gait analysis.
Notes: Verbiest, JR (corresponding author), Karel Grote Hogesch Antwerpen Univ Assoc, Dept Ind Sci & Technol, Antwerp, Belgium.; Verbiest, JR (corresponding author), Hasselt Univ, Fac Rehabil Sci, REVAL Rehabil Res Ctr, B-3590 Diepenbeek, Belgium.
joeri.verbiest@kdg.be
Keywords: embedded machine learning;tinyML;machine learning;regression;neural network;healthcare;gait analysis;gait stride length;inertial measurement unit;IMU;microcontroller;MCU;wearable sensors
Document URI: http://hdl.handle.net/1942/40881
e-ISSN: 1424-8220
DOI: 10.3390/s23167166
ISI #: 001056906000001
Rights: 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/).
Category: A1
Type: Journal Contribution
Appears in Collections:Research publications

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