In-House Deep Environmental Sentience for Smart Homecare Solutions Toward Ageing Society

Philip Easom, A. Bouridane, Feiyu Qiang, Li Zhang, Carolyn Downs, Richard M. Jiang
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Abstract

With an increasing amount of elderly people needing home care around the clock, care workers are not able to keep up with the demand of providing maximum support to those who require it. As medical costs of home care increase the quality is care suffering as a result of staff shortages, a solution is desperately needed to make the valuable care time of these workers more efficient. This paper proposes a system that is able to make use of the deep learning resources currently available to produce a base system that could provide a solution to many of the problems that care homes and staff face today. Transfer learning was conducted on a deep convolutional neural network to recognize common household objects was proposed. This system showed promising results with an accuracy, sensitivity and specificity of 90.6%, 0.90977 and 0.99668 respectively. Real-time applications were also considered, with the system achieving a maximum speed of 19.6 FPS on an MSI GTX 1060 GPU with 4GB of VRAM allocated.
面向老龄化社会的智能家居解决方案的内部深度环境感知
随着越来越多的老人需要全天候在家照顾,护理人员无法满足为有需要的人提供最大限度支持的需求。由于家庭护理的医疗费用增加,由于工作人员短缺,护理质量受到影响,迫切需要一种解决方案,使这些工作人员的宝贵护理时间更有效。本文提出了一个系统,该系统能够利用当前可用的深度学习资源来生成一个基础系统,该系统可以为养老院和工作人员今天面临的许多问题提供解决方案。提出了一种基于深度卷积神经网络的迁移学习方法来识别常见的家庭物品。该系统的准确率为90.6%,灵敏度为0.90977,特异度为0.99668。实时应用也被考虑在内,系统在分配4GB VRAM的MSI GTX 1060 GPU上实现了19.6 FPS的最大速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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