TL;DR
Meta-HAR introduces a federated learning framework with meta-learned signal embeddings for personalized human activity recognition, effectively handling data heterogeneity and improving individual user accuracy.
Contribution
It proposes a novel federated meta-learning approach for HAR, enabling personalized models with robust shared representations across users.
Findings
Outperforms baseline federated learning methods in accuracy.
Maintains high test accuracy for new and individual users.
Effective on multiple publicly available HAR datasets.
Abstract
Human activity recognition (HAR) based on mobile sensors plays an important role in ubiquitous computing. However, the rise of data regulatory constraints precludes collecting private and labeled signal data from personal devices at scale. Federated learning has emerged as a decentralized alternative solution to model training, which iteratively aggregates locally updated models into a shared global model, therefore being able to leverage decentralized, private data without central collection. However, the effectiveness of federated learning for HAR is affected by the fact that each user has different activity types and even a different signal distribution for the same activity type. Furthermore, it is uncertain if a single global model trained can generalize well to individual users or new users with heterogeneous data. In this paper, we propose Meta-HAR, a federated representation…
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