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使用可穿戴智能手机进行老年人活动识别的深度学习。

Deep Learning for Activity Recognition in Older People Using a Pocket-Worn Smartphone.

机构信息

Graduate School of Biomedical Engineering, University of New South Wales, Sydney 2033, Australia.

Neuroscience Research Australia, University of New South Wales, Sydney 2031, Australia.

出版信息

Sensors (Basel). 2020 Dec 15;20(24):7195. doi: 10.3390/s20247195.

Abstract

Activity recognition can provide useful information about an older individual's activity level and encourage older people to become more active to live longer in good health. This study aimed to develop an activity recognition algorithm for smartphone accelerometry data of older people. Deep learning algorithms, including convolutional neural network (CNN) and long short-term memory (LSTM), were evaluated in this study. Smartphone accelerometry data of free-living activities, performed by 53 older people (83.8 ± 3.8 years; 38 male) under standardized circumstances, were classified into lying, sitting, standing, transition, walking, walking upstairs, and walking downstairs. A 1D CNN, a multichannel CNN, a CNN-LSTM, and a multichannel CNN-LSTM model were tested. The models were compared on accuracy and computational efficiency. Results show that the multichannel CNN-LSTM model achieved the best classification results, with an 81.1% accuracy and an acceptable model and time complexity. Specifically, the accuracy was 67.0% for lying, 70.7% for sitting, 88.4% for standing, 78.2% for transitions, 88.7% for walking, 65.7% for walking downstairs, and 68.7% for walking upstairs. The findings indicated that the multichannel CNN-LSTM model was feasible for smartphone-based activity recognition in older people.

摘要

活动识别可以提供有关老年人活动水平的有用信息,并鼓励老年人更加活跃,以健康长寿。本研究旨在为老年人的智能手机加速度计数据开发一种活动识别算法。在这项研究中评估了深度学习算法,包括卷积神经网络(CNN)和长短期记忆(LSTM)。在标准条件下,对 53 名老年人(83.8 ± 3.8 岁;38 名男性)的自由活动的智能手机加速度计数据进行分类,分为躺卧、坐、站、过渡、行走、上楼梯和下楼梯。测试了 1D CNN、多通道 CNN、CNN-LSTM 和多通道 CNN-LSTM 模型。对模型的准确性和计算效率进行了比较。结果表明,多通道 CNN-LSTM 模型取得了最佳的分类效果,准确率为 81.1%,模型和时间复杂度可接受。具体来说,躺卧的准确率为 67.0%,坐的准确率为 70.7%,站的准确率为 88.4%,过渡的准确率为 78.2%,行走的准确率为 88.7%,下楼梯的准确率为 65.7%,上楼梯的准确率为 68.7%。研究结果表明,多通道 CNN-LSTM 模型适用于基于智能手机的老年人活动识别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1d9d/7765519/01cc7a3a7db6/sensors-20-07195-g001.jpg

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