Multi-level Adversarial Spatio-temporal Learning for Footstep Pressure based FoG Detection
Kun Hu, Shaohui Mei, Wei Wang, Kaylena A. Ehgoetz Martens, Liang Wang,, Simon J.G. Lewis, David D. Feng, Zhiyong Wang

TL;DR
This paper introduces a novel deep learning architecture, ASTN, for detecting freezing of gait in Parkinson's patients using footstep pressure data, achieving robust, subject-independent results and advancing clinical assessment tools.
Contribution
It presents the first footstep pressure-based FoG detection method using a deep neural network with adversarial training for subject-independent representations.
Findings
Achieved AUC of 0.85 on experimental data
Reduced overfitting through multi-level adversarial training
Demonstrated robustness across unseen subjects
Abstract
Freezing of gait (FoG) is one of the most common symptoms of Parkinson's disease, which is a neurodegenerative disorder of the central nervous system impacting millions of people around the world. To address the pressing need to improve the quality of treatment for FoG, devising a computer-aided detection and quantification tool for FoG has been increasingly important. As a non-invasive technique for collecting motion patterns, the footstep pressure sequences obtained from pressure sensitive gait mats provide a great opportunity for evaluating FoG in the clinic and potentially in the home environment. In this study, FoG detection is formulated as a sequential modelling task and a novel deep learning architecture, namely Adversarial Spatio-temporal Network (ASTN), is proposed to learn FoG patterns across multiple levels. A novel adversarial training scheme is introduced with a…
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Taxonomy
TopicsGait Recognition and Analysis · Diabetic Foot Ulcer Assessment and Management · Muscle activation and electromyography studies
