Differentiating Between Walking and Stair Climbing Using Raw Accelerometry Data

被引:0
作者
William F. Fadel
Jacek K. Urbanek
Steven R. Albertson
Xiaochun Li
Andrea K. Chomistek
Jaroslaw Harezlak
机构
[1] Indiana University,Department of Biostatistics, Richard M. Fairbanks School of Public Health & School of Medicine
[2] Johns Hopkins University,Division of Geriatric Medicine and Gerontology, Department of Medicine, School of Medicine
[3] Indiana University-Purdue University Indianapolis,Department of Computer and Information Science
[4] Indiana University Bloomington,Department of Epidemiology and Biostatistics, School of Public Health
[5] Indiana University Bloomington,Department of Epidemiology and Biostatistics, School of Public Health
来源
Statistics in Biosciences | 2019年 / 11卷
关键词
Classification trees; Signal processing; Accelerometer; Physical activity; Walking;
D O I
暂无
中图分类号
学科分类号
摘要
Wearable accelerometers provide an objective measure of human physical activity. They record high-frequency unlabeled three-dimensional time series data. We extract meaningful features from the raw accelerometry data and based on them develop and evaluate a classification method for the detection of walking and its subclasses, i.e., level walking, descending stairs, and ascending stairs. Our methodology is tested on a sample of 32 middle-aged subjects for whom we extracted features based on the Fourier and wavelet transforms. We build subject-specific and group-level classification models utilizing a tree-based methodology. We evaluate the effects of sensor location and tuning parameters on the classification accuracy of the tree models. In the group-level classification setting, we propose a robust feature inter-subject normalization and evaluate its performance compared to unnormalized data. The overall classification accuracy for the three activities at the subject-specific level was on average 87.6%, with the ankle-worn accelerometers showing the best performance with an average accuracy 90.5%. At the group-level, the average overall classification accuracy for the three activities using the normalized features was 80.2% compared to 72.3% for the unnormalized features. In summary, a framework is provided for better use and feature extraction from raw accelerometry data to differentiate among different walking modalities as well as considerations for study design.
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页码:334 / 354
页数:20
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