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Human Activity Classification with Inertial Sensors

机译:用惯性传感器进行人类活动分类

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摘要

Monitoring human physical activity has become an important research area and is essential to evaluate the degree of functional performance and general level of activity of a person. The discrimination of daily living activities can be implemented with machine learning techniques. A public dataset provided during the European Symposium on Artificial Neural Networks 2013, with time and frequency domain features extracted from raw signals of the smartphone inertial sensors, was used to implement and evaluate an activity classifier. Using a decision tree classifier, an accuracy of 86% was achieved for the classification of walk, climb stairs, stand, sit, and lay down. The results obtained suggest that the smartphone's inertial sensors could be used for an accurate physical activity classification even with real-time requirements.
机译:监测人体体育活动已成为一个重要的研究领域,对于评估人的功能性能和一般活动水平至关重要。可以通过机器学习技术实施日常生活活动的歧视。在欧洲人工神经网络2013上提供的公共数据集,随着从智能手机惯性传感器的原始信号提取的时间和频域特征,用于实现和评估活动分类器。使用决策树分类器,实现了86%的准确性,为散步,爬楼梯,静坐,坐下来实现86%的准确性。所获得的结果表明,即使具有实时要求,智能手机的惯性传感器也可用于准确的物理活动分类。

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