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基于联邦学习的智能医疗系统中可穿戴设备的人员移动识别

FL-PMI: Federated Learning-Based Person Movement Identification through Wearable Devices in Smart Healthcare Systems.

机构信息

Department of Computer Science and Engineering, St. Joseph's Institute of Technology, Chennai 600119, India.

Department of Computer Technology, Anna University, Chennai 600025, India.

出版信息

Sensors (Basel). 2022 Feb 11;22(4):1377. doi: 10.3390/s22041377.

Abstract

Recent technological developments, such as the Internet of Things (IoT), artificial intelligence, edge, and cloud computing, have paved the way in transforming traditional healthcare systems into smart healthcare (SHC) systems. SHC escalates healthcare management with increased efficiency, convenience, and personalization, via use of wearable devices and connectivity, to access information with rapid responses. Wearable devices are equipped with multiple sensors to identify a person's movements. The unlabeled data acquired from these sensors are directly trained in the cloud servers, which require vast memory and high computational costs. To overcome this limitation in SHC, we propose a federated learning-based person movement identification (FL-PMI). The deep reinforcement learning (DRL) framework is leveraged in FL-PMI for auto-labeling the unlabeled data. The data are then trained using federated learning (FL), in which the edge servers allow the parameters alone to pass on the cloud, rather than passing vast amounts of sensor data. Finally, the bidirectional long short-term memory (BiLSTM) in FL-PMI classifies the data for various processes associated with the SHC. The simulation results proved the efficiency of FL-PMI, with 99.67% accuracy scores, minimized memory usage and computational costs, and reduced transmission data by 36.73%.

摘要

最近的技术发展,如物联网(IoT)、人工智能、边缘和云计算,为将传统医疗系统转变为智能医疗(SHC)系统铺平了道路。SHC 通过使用可穿戴设备和连接性来提高效率、便利性和个性化,从而升级医疗保健管理,以快速响应访问信息。可穿戴设备配备了多个传感器来识别人员的运动。这些传感器获取的未标记数据直接在云服务器中进行训练,这需要大量的内存和高计算成本。为了克服 SHC 中的这一限制,我们提出了一种基于联邦学习的人员运动识别(FL-PMI)。FL-PMI 利用深度强化学习(DRL)框架自动标记未标记数据。然后使用联邦学习(FL)对数据进行训练,其中边缘服务器允许参数单独传递到云端,而不是传递大量的传感器数据。最后,FL-PMI 中的双向长短期记忆(BiLSTM)对与 SHC 相关的各种过程进行数据分类。仿真结果证明了 FL-PMI 的效率,准确率达到 99.67%,最小化了内存使用和计算成本,并将传输数据减少了 36.73%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/64ab/8962969/a6867febe5dd/sensors-22-01377-g001.jpg

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