FedFitTech: A Baseline in Federated Learning for Fitness Tracking
Zeyneddin Oz, Shreyas Korde, Marius Bock, Kristof Van Laerhoven

TL;DR
FedFitTech introduces a federated learning baseline for fitness tracking devices that enhances privacy, reduces communication costs, and maintains recognition accuracy, facilitating research and development in wearable fitness technology.
Contribution
This paper presents the FedFitTech baseline, a publicly available federated learning framework tailored for fitness tracking, addressing challenges like data imbalance and personalization.
Findings
Reduces communication by 13%
Maintains recognition accuracy with only 1% cost
Provides an open-source framework for research
Abstract
The rapid evolution of sensors and resource-efficient machine learning models has spurred the widespread adoption of wearable fitness tracking devices. Equipped with inertial sensors, such devices can continuously capture physical movements for fitness technology (FitTech), enabling applications from sports optimization to preventive healthcare. Traditional Centralized Learning approaches to detect fitness activities struggle with data privacy concerns, regulatory restrictions, and communication inefficiencies. In contrast, Federated Learning (FL) enables a decentralized model training by communicating model updates rather than potentially private wearable sensor data. Applying FL to FitTech presents unique challenges, such as data imbalance, lack of labeled data, heterogeneous user activities, and trade-offs between personalization and generalization. To simplify research on FitTech in…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Privacy-Preserving Technologies in Data · Physical Activity and Health
