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Varying behavior of different window sizes on the classification of static and dynamic physical activities from a single accelerometer

机译:单个加速度计在静态和动态物理活动分类上不同窗口大小的变化行为

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摘要

Accuracy of systems able to recognize in real time daily living activities heavily depends on the processing step for signal segmentation. So far, windowing approaches are used to segment data and the window size is usually chosen based on previous studies. However, literature is vague on the investigation of its effect on the obtained activity recognition accuracy, if both short and long duration activities are considered. In this work, we present the impact of window size on the recognition of daily living activities, where transitions between different activities are also taken into account. The study was conducted on nine participants who wore a tri-axial accelerometer on their waist and performed some short (sitting, standing, and transitions between activities) and long (walking, stair descending and stair ascending) duration activities. Five different classifiers were tested, and among the different window sizes, it was found that 1.5 s window size represents the best trade-off in recognition among activities, with an obtained accuracy well above 90%. Differences in recognition accuracy for each activity highlight the utility of developing adaptive segmentation criteria, based on the duration of the activities. (C) 2015 IPEM. Published by Elsevier Ltd. All rights reserved.
机译:能够实时识别日常生活活动的系统的精度在很大程度上取决于信号分段的处理步骤。到目前为止,使用开窗方法对数据进行分段,并且通常根据以前的研究来选择窗口大小。但是,如果同时考虑短期和长期活动,则文献对它对获得的活动识别准确性的影响的研究尚不明确。在这项工作中,我们介绍了窗口大小对识别日常生活活动的影响,其中还考虑了不同活动之间的转换。这项研究是针对九名参与者的,他们的腰部戴着三轴加速度计,并进行了一些短期(坐着,站立和活动之间的过渡)和长时间(步行,下楼梯和上楼梯)的活动。测试了五个不同的分类器,并且在不同的窗口大小中,发现1.5 s的窗口大小代表了活动之间识别的最佳权衡,获得的准确度远高于90%。每种活动的识别准确性差异突出显示了根据活动的持续时间开发自适应细分标准的效用。 (C)2015年IPEM。由Elsevier Ltd.出版。保留所有权利。

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