DEEP LEARNING-BASED MOTION ACTIVITY RECOGNITION USING SMARTPHONE SENSORS

Saedeh Abbaspour Gildeh, Faranak Fotouhi, H. Fotouhi, M. Vahabi, M. Lindén
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引用次数: 3

Abstract

MHealth systems establish a new way to transfer the health service to remote places. These systems offer significant benefits for continuous health monitoring. Motion activity recognition is one of the challenging mHealth use cases that incorporates continuous data collection and analysis of measurements. The main goal of this research is to analyze physical activity data. We employ measurements from the WISDM lab dataset 1 . These data are collected from participants performing motion activities. This data is then used by deep learning algorithms to predict special activities. In particular, CNN and CNN-LSTM algorithms are used to compare their accuracy, which resulted in approximately 95% and 97% respectively. Thus, the CNN-LSTM has higher accuracy in this analysis.
基于智能手机传感器的深度学习运动活动识别
移动医疗系统建立了一种将医疗服务转移到偏远地区的新方式。这些系统为持续健康监测提供了显著的好处。运动活动识别是具有挑战性的移动健康用例之一,它包含连续的数据收集和测量分析。本研究的主要目的是分析体育活动数据。我们采用了来自WISDM实验室数据集1的测量结果。这些数据是从参与者进行运动活动时收集的。这些数据随后被深度学习算法用于预测特殊活动。特别地,我们使用CNN和CNN- lstm算法来比较它们的准确率,结果分别约为95%和97%。因此,CNN-LSTM在此分析中具有更高的准确性。
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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