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User-Independent Motion State Recognition Using Smartphone Sensors

机译:使用智能手机传感器的用户无关运动状态识别

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摘要

The recognition of locomotion activities (e.g., walking, running, still) is important for a wide range of applications like indoor positioning, navigation, location-based services, and health monitoring. Recently, there has been a growing interest in activity recognition using accelerometer data. However, when utilizing only acceleration-based features, it is difficult to differentiate varying vertical motion states from horizontal motion states especially when conducting user-independent classification. In this paper, we also make use of the newly emerging barometer built in modern smartphones, and propose a novel feature called pressure derivative from the barometer readings for user motion state recognition, which is proven to be effective for distinguishing vertical motion states and does not depend on specific users' data. Seven types of motion states are defined and six commonly-used classifiers are compared. In addition, we utilize the motion state history and the characteristics of people's motion to improve the classification accuracies of those classifiers. Experimental results show that by using the historical information and human's motion characteristics, we can achieve user-independent motion state classification with an accuracy of up to 90.7%. In addition, we analyze the influence of the window size and smartphone pose on the accuracy.
机译:认识到运动活动(例如,步行,跑步,静止)对于诸如室内定位,导航,基于位置的服务和健康监控之类的广泛应用非常重要。最近,人们对使用加速度计数据进行活动识别越来越感兴趣。然而,当仅利用基于加速度的特征时,尤其是在进行用户独立分类时,很难将变化的垂直运动状态与水平运动状态区分开。在本文中,我们还利用了现代智能手机中内置的新兴气压计,并从气压计读数中提出了一种称为压力导数的新功能,用于用户运动状态识别,事实证明该功能可有效区分垂直运动状态,并且不会取决于特定用户的数据。定义了七种运动状态,并比较了六个常用分类器。此外,我们利用运动状态历史和人们运动的特征来提高这些分类器的分类精度。实验结果表明,利用历史信息和人类的运动特征,可以实现用户独立的运动状态分类,准确率高达90.7%。此外,我们分析了窗口大小和智能手机姿势对准确性的影响。

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