Abstract:
With the development of technologies, an increasing number of wearable devices that are currently at the heart of the development of the Internet of Things are used aroun...Show MoreMetadata
Abstract:
With the development of technologies, an increasing number of wearable devices that are currently at the heart of the development of the Internet of Things are used around the world. The concerns about privacy, in particular healthcare wearable devices, are exacerbated as the requirement for self-health monitoring increases. In addition, many sources of data are geographically separated and might not be allowed to release due to patients or regulatory constraints. Accordingly, in this paper, a distributed hierarchical deep learning system is proposed. The proposed system applying a distributed hierarchical neural network over a cloud server and smartphones. The system enables multiple smartphones to train a shared consensus model collaboratively while keeping the private data locally to protect data privacy, and the system takes advantage of the abundant computational resources on the cloud server to lower the computational overhead on smartphones. The proposed system is demonstrated by a fall detection study which is the common healthcare issue among human beings. The patients’ data are collected from multiple wearable devices including the smartphone, the smartwatch, and the smart insoles. The experimental results show that the distributed hierarchical deep learning system can reproduce the accuracy, specificity, precision, and sensitivity of centralized machine learning while preserving privacy.
Published in: IEEE Sensors Journal ( Volume: 20, Issue: 16, 15 August 2020)
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- IEEE Keywords
- Index Terms
- Deep Learning ,
- Wearable Computing ,
- Distributed Deep Learning ,
- Neural Network ,
- Machine Learning ,
- Development Of Technology ,
- Cloud Computing ,
- Internet Of Things ,
- Data Privacy ,
- Wearable Devices ,
- Computational Overhead ,
- Hierarchical System ,
- Multiple Devices ,
- Consensus Model ,
- Deep Learning System ,
- Hierarchical Neural Network ,
- Learning Algorithms ,
- Support Vector Machine ,
- Artificial Neural Network ,
- Mobile Devices ,
- Hierarchical Architecture ,
- Personal Data ,
- Deep Neural Network ,
- Round Robin ,
- Wearable Sensors ,
- Units In Layer ,
- Sensor Data ,
- Distribution System ,
- Layer Model ,
- Inertial Measurement Unit
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Deep Learning ,
- Wearable Computing ,
- Distributed Deep Learning ,
- Neural Network ,
- Machine Learning ,
- Development Of Technology ,
- Cloud Computing ,
- Internet Of Things ,
- Data Privacy ,
- Wearable Devices ,
- Computational Overhead ,
- Hierarchical System ,
- Multiple Devices ,
- Consensus Model ,
- Deep Learning System ,
- Hierarchical Neural Network ,
- Learning Algorithms ,
- Support Vector Machine ,
- Artificial Neural Network ,
- Mobile Devices ,
- Hierarchical Architecture ,
- Personal Data ,
- Deep Neural Network ,
- Round Robin ,
- Wearable Sensors ,
- Units In Layer ,
- Sensor Data ,
- Distribution System ,
- Layer Model ,
- Inertial Measurement Unit
- Author Keywords