Federated Split Learning for Human Activity Recognition with Differential Privacy
This work addresses privacy-preserving activity recognition for edge networks, presenting an incremental improvement over existing methods.
The paper tackles human activity recognition by proposing a Federated Split Learning framework with Differential Privacy, achieving improved accuracy and faster communication times compared to traditional Federated Learning.
This paper proposes a novel intelligent human activity recognition (HAR) framework based on a new design of Federated Split Learning (FSL) with Differential Privacy (DP) over edge networks. Our FSL-DP framework leverages both accelerometer and gyroscope data, achieving significant improvements in HAR accuracy. The evaluation includes a detailed comparison between traditional Federated Learning (FL) and our FSL framework, showing that the FSL framework outperforms FL models in both accuracy and loss metrics. Additionally, we examine the privacy-performance trade-off under different data settings in the DP mechanism, highlighting the balance between privacy guarantees and model accuracy. The results also indicate that our FSL framework achieves faster communication times per training round compared to traditional FL, further emphasizing its efficiency and effectiveness. This work provides valuable insight and a novel framework which was tested on a real-life dataset.