CoviFL:边缘辅助联邦学习在AIoMT框架中的远程COVID-19检测

Aneesh Bhattacharya, Risav Rana, Venkanna Udutalapally, Debanjan Das
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引用次数: 0

摘要

由于所有区域都缺乏适当的资源,COVID-19的检测一直是一项全球性挑战。最近,研究人员利用个人咳嗽音频作为深度学习模型的输入,进行了COVID-19非侵入性检测。然而,这些方法在实际部署中没有充分关注资源和基础设施的限制,并且缺乏对维护用户数据隐私的关注,使得这些解决方案不适合大规模使用。我们提出了一个资源高效的CoviFL框架,使用AIoMT方法进行远程COVID-19检测,同时保持用户数据隐私。在便携式AIoMT边缘设备上,使用联邦学习去中心化CoviFL CNN模型训练和测试用户的COVID-19状态,准确率为93.01%。在真实数据集上的实验表明,即使在资源和基础设施受限的环境中,所提出的CoviF - L解决方案也有望进行大规模部署,从而适用于远程COVID-19检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CoviFL: Edge-Assisted Federated Learning for Remote COVID-19 Detection in an AIoMT Framework
Detection of COVID-19 has been a global challenge due to the lack of proper resources across all regions. Recently, research has been conducted for non-invasive testing of COVID-19 using an individual's cough audio as input to deep learning models. However, these methods do not pay sufficient attention to resource and infrastructure constraints for real-life practical deployment and the lack of focus on maintaining user data privacy makes these solutions unsuitable for large-scale use. We propose a resource-efficient CoviFL framework using an AIoMT approach for remote COVID-19 detection while maintaining user data privacy. Federated learning has been used to decentralize the CoviFL CNN model training and test the COVID-19 status of users with an accuracy of 93.01 % on portable AIoMT edge devices. Experiments on real-world datasets suggest that the proposed CoviF L solution is promising for large-scale deployment even in resource and infrastructure-constrained environments making it suitable for remote COVID-19 detection.
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