Preece Stephen J, Goulermas John Yannis, Kenney Laurence P J, Howard David
Centre for Rehabilitation and Human Performance Research, University of Salford, Salford M6 6PU, UK.
IEEE Trans Biomed Eng. 2009 Mar;56(3):871-9. doi: 10.1109/TBME.2008.2006190. Epub 2008 Oct 31.
Driven by the demands on healthcare resulting from the shift toward more sedentary lifestyles, considerable effort has been devoted to the monitoring and classification of human activity. In previous studies, various classification schemes and feature extraction methods have been used to identify different activities from a range of different datasets. In this paper, we present a comparison of 14 methods to extract classification features from accelerometer signals. These are based on the wavelet transform and other well-known time- and frequency-domain signal characteristics. To allow an objective comparison between the different features, we used two datasets of activities collected from 20 subjects. The first set comprised three commonly used activities, namely, level walking, stair ascent, and stair descent, and the second a total of eight activities. Furthermore, we compared the classification accuracy for each feature set across different combinations of three different accelerometer placements. The classification analysis has been performed with robust subject-based cross-validation methods using a nearest-neighbor classifier. The findings show that, although the wavelet transform approach can be used to characterize nonstationary signals, it does not perform as accurately as frequency-based features when classifying dynamic activities performed by healthy subjects. Overall, the best feature sets achieved over 95% intersubject classification accuracy.
由于向更久坐不动的生活方式转变对医疗保健产生的需求推动,人们在人体活动的监测和分类方面投入了大量精力。在先前的研究中,各种分类方案和特征提取方法已被用于从一系列不同的数据集中识别不同的活动。在本文中,我们对从加速度计信号中提取分类特征的14种方法进行了比较。这些方法基于小波变换以及其他著名的时域和频域信号特征。为了对不同特征进行客观比较,我们使用了从20名受试者收集的两个活动数据集。第一组包括三种常用活动,即水平行走、上楼梯和下楼梯,第二组共有八种活动。此外,我们比较了三种不同加速度计放置方式的不同组合下每个特征集的分类准确率。分类分析使用基于受试者的稳健交叉验证方法和最近邻分类器进行。研究结果表明,尽管小波变换方法可用于表征非平稳信号,但在对健康受试者进行的动态活动进行分类时,其表现不如基于频率的特征准确。总体而言,最佳特征集实现了超过95%的受试者间分类准确率。