2020
DOI: 10.1109/jsen.2020.2988667
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Wearable Computing With Distributed Deep Learning Hierarchy: A Study of Fall Detection

Abstract: Chapter 1. Introduction 1 Chapter 2. Literature Review 5 Chapter 3. System Overview 8 Data Acquisition and Processing 9 Distributed Hierarchical Deep Learning Chapter 4. Experiment and Results Experimental Setup Result and Analysis Chapter 5. Discussion Why to use resources on the cloud server? What are the requirements about the incoming data during the training process? Why to use paired smart insole rather than only one smart insole? Chapter 6. Conclusion Chapter 7. Suggested Future Research References iv L… Show more

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Cited by 31 publications
(9 citation statements)
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“…Furthermore, a lightweight CNN with few layers in a cascade connection was designed to learn the physical activity patterns from encoded activity images. In [140], a system of fall detection using wearable devices was proposed for IoT-based healthcare services, in which a hierarchical DL framework with CNN architectures was developed for collaboratively processing sensory data at local devices and a cloud server. As capably working with multiple wearable devices (e.g., smartphone, smartwatch, and smart insoles), the system yielded high correct detection rate with high data privacy.…”
Section: A Healthcarementioning
confidence: 99%
“…Furthermore, a lightweight CNN with few layers in a cascade connection was designed to learn the physical activity patterns from encoded activity images. In [140], a system of fall detection using wearable devices was proposed for IoT-based healthcare services, in which a hierarchical DL framework with CNN architectures was developed for collaboratively processing sensory data at local devices and a cloud server. As capably working with multiple wearable devices (e.g., smartphone, smartwatch, and smart insoles), the system yielded high correct detection rate with high data privacy.…”
Section: A Healthcarementioning
confidence: 99%
“…Due to some of the privacy and security concerns of IoT solutions as well as the sensitivity of the data that is obtained from them, especially in areas like healthcare [1] and supply chain management [1], some current implementations have infused blockchain into their IoT systems. Some examples of these include applications in wearables [65,66], healthcare [3], data storage [67], smart transportation system, and smart cities [68].…”
Section: Future Integration Scenarios Formentioning
confidence: 99%
“…The studies that focus on this area can also be subdivided, with some of them focusing on the development of wearable systems or devices [18][19][20], while others use edge devices (most commonly mobile phones) for information processing [21][22][23]. These products are usually highly effective in detecting falls.…”
Section: Fall Detectionmentioning
confidence: 99%