Semi-supervised Federated Learning for Activity Recognition
Yuchen Zhao, Hanyang Liu, Honglin Li, Payam Barnaghi, Hamed Haddadi

TL;DR
This paper introduces a semi-supervised federated learning approach for activity recognition in IoT environments, combining unsupervised local autoencoders with supervised global classifiers to improve accuracy and reduce label dependency.
Contribution
It proposes a novel semi-supervised federated learning system that enhances activity recognition accuracy while reducing label requirements and model size in IoT settings.
Findings
Higher accuracy than centralized and data-augmentation methods
Reduces label requirements and model size
Faster local recognition speed
Abstract
Training deep learning models on in-home IoT sensory data is commonly used to recognise human activities. Recently, federated learning systems that use edge devices as clients to support local human activity recognition have emerged as a new paradigm to combine local (individual-level) and global (group-level) models. This approach provides better scalability and generalisability and also offers better privacy compared with the traditional centralised analysis and learning models. The assumption behind federated learning, however, relies on supervised learning on clients. This requires a large volume of labelled data, which is difficult to collect in uncontrolled IoT environments such as remote in-home monitoring. In this paper, we propose an activity recognition system that uses semi-supervised federated learning, wherein clients conduct unsupervised learning on autoencoders with…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Context-Aware Activity Recognition Systems · IoT and Edge/Fog Computing
MethodsSolana Customer Service Number +1-833-534-1729 · Softmax
