Federated Multi-Source Domain Adaptation for mmWave-Based Human Activity Recognition

Published: 2025, Last Modified: 21 Jan 2026IEEE Trans. Mob. Comput. 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Contactless mmWave-based human activity recognition (HAR) is essential for various applications, yet most existing approaches often assume consistent environments. Integrating domain adaptation offers a promising solution to this challenge. This prevailing paradigm works well when the source and target data are centralized on a single server while learning to adapt. However, in more universal and practical situations, such as personal health records, users’ biometric information, and financial issues, the raw data is typically protected by different privacy-preserving policies and is stored by multiple parties. Additionally, labeling RF signals in the target domain is a non-trivial and labor-intensive task for most end-users. To address these problems, this paper introduces FMDA, a federated multi-source domain adaptation framework for mmWave-based HAR. FMDA assesses the contribution of each source and performs weighted parameter aggregation for knowledge transfer. This facilitates unsupervised training of the target HAR model without requiring access to any source domain data. Moreover, the model is optimized by minimizing the generalization gaps between the source and target models, benefiting all participants during the learning process and enhancing overall performance. Extensive experiments demonstrate the effectiveness of FMDA. The results indicate that in the target domain, FMDA achieves comparable performance to supervised learning approaches, while also enhancing the efficacy of source domain models to varying degrees.
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