Human Activity Recognition via an Accelerometer-Enabled-Smartphone Using Kernel Discriminant Analysis

A. M. Khan, Y-K. Lee, S. Lee, T.-S. Kim
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引用次数: 246

Abstract

Nowadays many people use smartphones with built-in accelerometers which makes these smartphones capable of recognizing daily activities. However, mobile phones are carried along freely instead of a firm attachment to a body part. Since the output of any body-worn triaxial accelerometer varies for the same physical activity at different positions on a subject's body, the acceleration data thus could vary significantly for the same activity which could result in high within-class variance. Therefore, realization of activity-aware smartphones requires a recognition method that could function independent of phone's position along subjects' bodies. In this study, we present a method to address this problem. The proposed method is validated using five daily physical activities. Activity data is collected from five body positions using a smartphone with a built-in triaxial accelerometer. Features including autoregressive coefficients and signal magnitude area are calculated. Kernel Discriminant Analysis is then employed to extract the significant non-linear discriminating features which maximize the between-class variance and minimize the within-class variance. Final classification is performed by means of artificial neural nets. The average accuracy of about 96\% illustrates the effectiveness of the proposed method.
基于核判别分析的加速计智能手机人类活动识别
如今,许多人使用内置加速度计的智能手机,这使得这些智能手机能够识别日常活动。然而,手机可以自由携带,而不是固定在身体的某个部位。由于任何穿戴式三轴加速度计的输出对于受试者身体不同位置的相同身体活动都是不同的,因此对于相同的活动,加速度数据可能会有很大的变化,这可能导致高的类内方差。因此,实现活动感知智能手机需要一种独立于手机沿受试者身体位置的识别方法。在本研究中,我们提出了一种解决这一问题的方法。该方法通过5个日常身体活动进行验证。使用内置三轴加速度计的智能手机从五个身体位置收集活动数据。计算了自回归系数和信号幅值面积等特征。然后,利用核判别分析提取显著的非线性判别特征,使类间方差最大化,类内方差最小化。最后利用人工神经网络进行分类。平均精度约为96%,说明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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