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A Deep Transfer Learning-based Edge Computing Method for Home Health Monitoring

机译:基于深度迁移学习的家庭健康监测边缘计算方法

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The health-care gets huge stress in a pandemic or epidemic situation. Some diseases such as COVID-19 that causes a pandemic is highly spreadable from an infected person to others. Therefore, providing health services at home for noncritical infected patients with isolation shall assist to mitigate this kind of stress. In addition, this practice is also very useful for monitoring the health-related activities of elders who live at home. The home health monitoring, a continuous monitoring of a patient or elder at home using visual sensors is one such nonintrusive sub-area of health services at home. In this article, we propose a transfer learning-based edge computing method for home health monitoring. Specifically, a pre-trained convolutional neural network-based model can leverage edge devices with a small amount of ground-labeled data and fine-tuning method to train the model. Therefore, on-site computing of visual data captured by RGB, depth, or thermal sensor could be possible in an affordable way. As a result, raw data captured by these types of sensors is not required to be sent outside from home. Therefore, privacy, security, and bandwidth scarcity shall not be issues. Moreover, real-time computing for the above-mentioned purposes shall be possible in an economical way.
机译:在大流行或疫情中,医疗保健受到巨大压力。一些疾病,如COVID-19,导致大流行从感染者到其他人高度传播。因此,在家中为隔离的非重症感染患者提供卫生服务将有助于缓解这种压力。此外,这种做法对于监测居家老人的健康相关活动也非常有用。家庭健康监测,即使用视觉传感器在家中对患者或老年人进行连续监测,是家庭健康服务的一个非侵入性子领域。在本文中,我们提出了一种基于转移学习的边缘计算方法,用于家庭健康监测。具体来说,基于预训练卷积神经网络的模型可以利用边缘设备和少量地面标记数据,并通过微调方法来训练模型。因此,现场计算RGB、深度或热传感器捕获的视觉数据可以以一种经济实惠的方式实现。因此,这些类型的传感器捕获的原始数据不需要从家里发送到外面。因此,隐私、安全和带宽不足不应成为问题。此外,应以经济的方式实现上述目的的实时计算。

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