Sensor-based Gait Parameter Extraction with Deep Convolutional Neural Networks
Julius Hannink, Thomas Kautz, Cristian F. Pasluosta, Karl-G\"unter, Ga{\ss}mann, Jochen Klucken, Bjoern M. Eskofier

TL;DR
This paper introduces a deep learning approach using convolutional neural networks to extract gait parameters from inertial sensor data, offering a more practical and accurate alternative to traditional methods for clinical gait analysis.
Contribution
The study presents a novel deep learning framework that directly estimates gait parameters from sensor data, outperforming traditional double integration techniques and enabling mobile clinical assessments.
Findings
Ensemble neural networks outperform combined models in accuracy.
Achieved estimation errors comparable to state-of-the-art methods.
Demonstrated potential for clinical application in gait impairment assessment.
Abstract
Measurement of stride-related, biomechanical parameters is the common rationale for objective gait impairment scoring. State-of-the-art double integration approaches to extract these parameters from inertial sensor data are, however, limited in their clinical applicability due to the underlying assumptions. To overcome this, we present a method to translate the abstract information provided by wearable sensors to context-related expert features based on deep convolutional neural networks. Regarding mobile gait analysis, this enables integration-free and data-driven extraction of a set of 8 spatio-temporal stride parameters. To this end, two modelling approaches are compared: A combined network estimating all parameters of interest and an ensemble approach that spawns less complex networks for each parameter individually. The ensemble approach is outperforming the combined modelling in…
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