人体运动模式评估的普适简化方法

Mianbo Huang, Guoru Zhao, Lei Wang, Feng Yang
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引用次数: 9

摘要

人体运动模式是康复治疗、运动医学和老年人监测的宝贵信息,但通过多城市加速器或仪表采集会导致佩戴不舒适和数据处理复杂。本文研究并评价了利用单腰固定加速度计检测人体运动模式的方法。10名受试者被要求定期在跑步机上跑步或走路。设计了截止频率为20Hz的5阶巴特沃斯低通滤波器对加速度数据进行滤波并对样本进行去噪。通过收集跑步机速度作为标签数据和个人腰部加速度数据,建立训练数据集。提出了一种基于EM学习算法训练的贝叶斯网络分类器,用于人体运动模式评估。实验表明,该方法可以预测人体的行走和跑步状态,准确率达到90%以上。这样的精度也可以实现,甚至一个单一的优劣加速度特征。快速步行和正常步行的分类也取得了令人满意的结果。这表明在一些只需要对行走和跑步状态进行分类的应用中,可以采用低功耗、低计算复杂度的单轴加速度计作为人体运动检测器。
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A Pervasive Simplified Method for Human Movement Pattern Assessing
Human movement pattern can be a valuable information for rehabilitation therapy, sport medicine and elderly people monitoring, but acquisition of them through multi-citeacceler or meters would result in uncomfortable wearing and complex data processing. In this paper, method of using a single waist-fixed accelerometer to detect human movement pattern was investigated and evaluated. 10 subjects were asked to run or walk on a treadmill in a regular way. A 5th order Butterworth low pass filter with cutoff frequency 20Hz was designed to filter the acceleration data and denoise the sample. By collecting the velocity from treadmill as label data and the individual’s waist acceleration data, training data set was established. A Bayesian network classifier trained by EM learning algorithm was developed for human movement pattern assessing. Experiment showed that the method could predict the human walking and running state with a considerable accuracy more than 90%. Such accuracy could also be achieved even with a single superior-inferior acceleration feature. The classification of fast speed walking and normal speed one also achieved satisfying result. This indicated that in some application in which walking and running state were only needed to classify could employ the low power, low computational complexity uniaxial accelerometeras the human movement detector.
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