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首页> 外文期刊>Journal of Biomechanics >Classifying running speed conditions using a single wearable sensor: Optimal segmentation and feature extraction methods
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Classifying running speed conditions using a single wearable sensor: Optimal segmentation and feature extraction methods

机译:使用单个可穿戴传感器进行分类运行速度条件:最佳分割和特征提取方法

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摘要

Accelerometers have been used to classify running patterns, but classification accuracy and computational load depends on signal segmentation and feature extraction. Stride-based segmentation relies on identifying gait events, a step avoided by using window-based segmentation. For each segment, discrete points can be extracted from the accelerometer signal, or advanced features can be computed. Therefore, the purpose of this study was to examine how different segmentation and feature extraction methods influence the accuracy and computational load of classifying running conditions. Forty-four runners ran at their preferred speed and 25% faster than preferred while an accelerometer at the lower back recorded 3D accelerations. Computational load was determined as the accelerometer signal was segmented into single and five strides, and corresponding small and large windows, with discrete points extracted from the single stride segments and advanced features computed from all four segment types. Each feature set was used to classify speed conditions and classification accuracy was recorded. Computational load and classification accuracy were compared across all feature sets using a repeated measures MANOVA, with follow-up t-tests to compare feature type (discrete vs. advanced), segmentation method (stride-vs. window-based), and segment size (small vs. large), using a Bonferroni-adjusted alpha = 0.003. The five-stride (97.49 (+/- 4.57)%) and large-window advanced (97.23 (+/- 5.51)%) feature sets produced the greatest classification accuracy, but the large-window advanced feature set had a lower computational load (0.0041 (+/- 0.0002)s) than the stride-based feature sets. Therefore, using a few advanced features and large overlapping window sizes yields the best performance of both classification accuracy and computational load. (C) 2018 Elsevier Ltd. All rights reserved.
机译:加速度计已被用于对运行模式进行分类,但分类准确度和计算负载取决于信号分割和特征提取。基于跨越步态事件的基于跨度的分段依赖于识别步态事件,通过使用基于窗口的分割来避免的一步。对于每个段,可以从加速度计信号中提取离散点,或者可以计算高级功能。因此,本研究的目的是检查如何不同的分割和特征提取方法如何影响分类运行条件的准确性和计算负荷。四十四个跑步者在他们的首选速度下跑步,比首选25%,而下背部的加速度计录制3D加速度。当加速度计信号分段为单个和五个进步并且相应的小和大窗口时,确定计算负荷,并且从单个步幅段提取的离散点和从所有四个段类型计算的高级功能。每个功能集用于对速度条件和分类准确度进行分类。使用重复措施MANOVA的所有特征集进行了计算负载和分类准确度,具有后续T检验,可比较特征类型(离散与高级),分段方法(基于窗口 - 基于窗口)和段大小(小与大),使用Bonferroni调整的alpha = 0.003。五步(97.49(+/- 4.57)%)和大型窗口高级(97.23(+/- 5.51)%)功能集生产了最大的分类准确性,但大窗口高级功能集具有较低的计算负荷(0.0041(+/- 0.0002))比基于步幅的功能集。因此,使用一些高级功能和大重叠窗口大小产生分类精度和计算负载的最佳性能。 (c)2018年elestvier有限公司保留所有权利。

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