Bersch Sebastian D, Azzi Djamel, Khusainov Rinat, Achumba Ifeyinwa E, Ries Jana
School of Engineering, University of Portsmouth, Anglesea Building, Anglesea Road, Portsmouth PO1 3DJ, UK.
Portsmouth Business School, University of Portsmouth, Richmond Building, Portland Street, Portsmouth PO1 3DE, UK.
Sensors (Basel). 2014 Mar 4;14(3):4239-70. doi: 10.3390/s140304239.
It is known that parameter selection for data sampling frequency and segmentation techniques (including different methods and window sizes) has an impact on the classification accuracy. For Ambient Assisted Living (AAL), no clear information to select these parameters exists, hence a wide variety and inconsistency across today's literature is observed. This paper presents the empirical investigation of different data sampling rates, segmentation techniques and segmentation window sizes and their effect on the accuracy of Activity of Daily Living (ADL) event classification and computational load for two different accelerometer sensor datasets. The study is conducted using an ANalysis Of VAriance (ANOVA) based on 32 different window sizes, three different segmentation algorithm (with and without overlap, totaling in six different parameters) and six sampling frequencies for nine common classification algorithms. The classification accuracy is based on a feature vector consisting of Root Mean Square (RMS), Mean, Signal Magnitude Area (SMA), Signal Vector Magnitude (here SMV), Energy, Entropy, FFTPeak, Standard Deviation (STD). The results are presented alongside recommendations for the parameter selection on the basis of the best performing parameter combinations that are identified by means of the corresponding Pareto curve.
众所周知,数据采样频率和分割技术(包括不同方法和窗口大小)的参数选择会对分类精度产生影响。对于环境辅助生活(AAL)而言,不存在选择这些参数的明确信息,因此在当今的文献中观察到了广泛的多样性和不一致性。本文针对两个不同的加速度计传感器数据集,对不同的数据采样率、分割技术和分割窗口大小及其对日常生活活动(ADL)事件分类精度和计算负荷的影响进行了实证研究。该研究基于32种不同的窗口大小、三种不同的分割算法(有重叠和无重叠,共六个不同参数)以及六种采样频率,使用方差分析(ANOVA)对九种常见分类算法进行。分类精度基于由均方根(RMS)、均值、信号幅度面积(SMA)、信号向量幅度(此处为SMV)、能量、熵、FFT峰值、标准差(STD)组成的特征向量。结果与基于通过相应帕累托曲线确定的最佳性能参数组合的参数选择建议一同呈现。