Nguyen Nhan Duc, Truong Phuc Huu, Jeong Gu-Min
School of Electrical Engineering, Kookmin University, Jeongneung-dong, Seongbukgu, 02707 Korea.
Physiol Meas. 2017 Aug 18;38(9):L10-L16. doi: 10.1088/1361-6579/aa7c10.
In this letter, we propose a novel method for classifying daily wrist activities by using a smart band.
Triaxial acceleration data are collected by built-in sensors of the smart band during experiments regarding five activities, i.e. texting, calling, placing a hand in a pocket, carrying a suitcase, and swinging a hand. We analyze patterns in the sensor signals during these activities based on three types of features, i.e. norm, norm-variance, and frequency-domain features. After extracting the significant features, a multi-class support vector machine algorithm is applied to classify these activities.
We obtained recognition error rates of approximately 2.7% by applying the proposed method to the experimental dataset.
在本信函中,我们提出一种利用智能手环对日常手腕活动进行分类的新方法。
在涉及五项活动(即发短信、打电话、将手放进口袋、提行李箱和摆动手臂)的实验过程中,通过智能手环的内置传感器收集三轴加速度数据。我们基于三种特征类型(即范数、范数方差和频域特征)分析这些活动期间传感器信号中的模式。提取重要特征后,应用多类支持向量机算法对这些活动进行分类。
通过将所提出的方法应用于实验数据集,我们获得了约2.7%的识别错误率。