1. Freezing of Gait Detection Using Gramian Angular Fields and Federated Learning from Wearable Sensors
- Author
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Soumma, Shovito Barua, Alam, S M Raihanul, Rahman, Rudmila, Mahi, Umme Niraj, Mamun, Abdullah, Mostafavi, Sayyed Mostafa, and Ghasemzadeh, Hassan
- Subjects
Computer Science - Machine Learning ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Freezing of gait (FOG) is a debilitating symptom of Parkinson's disease (PD) that impairs mobility and safety. Traditional detection methods face challenges due to intra and inter-patient variability, and most systems are tested in controlled settings, limiting their real-world applicability. Addressing these gaps, we present FOGSense, a novel FOG detection system designed for uncontrolled, free-living conditions. It uses Gramian Angular Field (GAF) transformations and federated deep learning to capture temporal and spatial gait patterns missed by traditional methods. We evaluated our FOGSense system using a public PD dataset, 'tdcsfog'. FOGSense improves accuracy by 10.4% over a single-axis accelerometer, reduces failure points compared to multi-sensor systems, and demonstrates robustness to missing values. The federated architecture allows personalized model adaptation and efficient smartphone synchronization during off-peak hours, making it effective for long-term monitoring as symptoms evolve. Overall, FOGSense achieves a 22.2% improvement in F1-score compared to state-of-the-art methods, along with enhanced sensitivity for FOG episode detection. Code is available: https://github.com/shovito66/FOGSense.
- Published
- 2024