基于自动编码器和主成分分析的步行时足底压力的跌倒史估计

Midori Kawada, Kanako Nakajima, A. Sashima, Yuji Ohta, K. Kurumatani
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引用次数: 1

摘要

跌倒风险评估很重要,因为老年人跌倒占所需长期护理因素的12%。行走时足底压力是步态运动的主要原因,而跌倒风险最大的影响因素是前一年的跌倒史。在本研究中,我们利用行走时足底压力波形模型构建跌倒史估计算法。我们实现了基于前馈神经网络、支持向量机、自动编码器和主成分分析的算法,并对基于足底压力的跌倒历史估计算法进行了性能比较。结果表明,利用自动编码器重构的波形具有最佳的性能。我们所开发的跌倒史估计算法有望成为老年人较好的跌倒风险评估工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Fall History by Plantar Pressure DuringWalking Based on Auto Encoder and Principal Component Analysis
Fall risk assessment is important, because falls for the elderly account for 12% of the factor of needed LongTerm Care. The plantar pressure during walking is responsible for gait movement, and fall risk and the most influential factor is the fall history of the previous year. In this research, we constructed fall history estimation algorithm by a plantar pressure waveform model during walking. We implemented algorithms based on Feed Forward Neural Network, Support Vector Machine, Auto Encoder, and Principal Component Analysis We carried out the comparison of the algorithms based on the performances of fall history estimation by plantar pressure. The results showed that the reconstructed waveform by Auto Encoder has the best performance. The fall history estimation algorithm that we have developed is expected to become a better fall risk assessment tool for elderly people.
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