Exploiting Deep Visual Geometry Group Architecture for Fall Detection in the Elderly People

None Hina Bashir, None Kanwal Majeed, None Sumaira Zafar, None Ghulam Zohra, None Syed Farooq Ali, None Aadil Zia Khan
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Abstract

Over the last couple of decades, human fall detection has gained considerable popularity, especially for the elderly. Elderly people need more attention as compared to others in their homes, hospitals, and care centers. Various solutions have been proposed to deal with this problem, yet, many aspects of this problem are still unresolved. The current study proposed an approach for human fall detection based on the Visual Geometry Architecture of deep learning. The presented approach was weighed up with state-of-the-art approaches including ResNet-50 and even ResNet-101 by using MCF and URFD datasets, outperforming them with an accuracy of 98%. The proposed approach also outperformed these deep architectures in terms of performance efficiency.
基于深度视觉几何群结构的老年人跌倒检测
在过去的几十年里,人体跌倒检测已经获得了相当大的普及,特别是对老年人。与在家里、医院和护理中心的其他人相比,老年人需要更多的关注。针对这个问题已经提出了各种各样的解决方案,然而,这个问题的许多方面仍未得到解决。本研究提出了一种基于深度学习视觉几何架构的人体跌倒检测方法。通过使用MCF和URFD数据集,将所提出的方法与最先进的方法(包括ResNet-50甚至ResNet-101)进行了权衡,以98%的准确率优于它们。所提出的方法在性能效率方面也优于这些深度体系结构。
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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