Unilever Discover, Colworth, United Kingdom.
Med Sci Sports Exerc. 2012 Apr;44(4):742-8. doi: 10.1249/MSS.0b013e31823bf95c.
Most accelerometer-based activity monitors are worn on the waist or lower back for assessment of habitual physical activity. Output is in arbitrary counts that can be classified by activity intensity according to published thresholds. The purpose of this study was to develop methods to classify physical activities into walking, running, household, or sedentary activities based on raw acceleration data from the GENEA (Gravity Estimator of Normal Everyday Activity) and compare classification accuracy from a wrist-worn GENEA with a waist-worn GENEA.
Sixty participants (age = 49.4 ± 6.5 yr, body mass index = 24.6 ± 3.4 kg·m⁻²) completed an ordered series of 10-12 semistructured activities in the laboratory and outdoor environment. Throughout, three GENEA accelerometers were worn: one at the waist, one on the left wrist, and one on the right wrist. Acceleration data were collected at 80 Hz. Features obtained from both fast Fourier transform and wavelet decomposition were extracted, and machine learning algorithms were used to classify four types of daily activities including sedentary, household, walking, and running activities.
The computational results demonstrated that the algorithm we developed can accurately classify certain types of daily activities, with high overall classification accuracy for both waist-worn GENEA (0.99) and wrist-worn GENEA (right wrist = 0.97, left wrist = 0.96).
We have successfully developed algorithms suitable for use with wrist-worn accelerometers for detecting certain types of physical activities; the performance is comparable to waist-worn accelerometers for assessment of physical activity.
大多数基于加速度计的活动监测器佩戴在腰部或下背部,用于评估习惯性体力活动。输出是任意计数,可以根据发布的阈值按活动强度进行分类。本研究的目的是开发一种方法,根据 GENEA(日常正常活动重力估计器)的原始加速度数据将体力活动分类为步行、跑步、家务或久坐活动,并比较腕戴 GENEA 和腰戴 GENEA 的分类准确性。
60 名参与者(年龄=49.4±6.5 岁,体重指数=24.6±3.4kg·m⁻²)在实验室和户外环境中完成了一系列 10-12 项半结构化活动。在此过程中,佩戴了三个 GENEA 加速度计:一个在腰部,一个在左手腕,一个在右手腕。以 80Hz 的频率采集加速度数据。从快速傅里叶变换和小波分解中提取获得的特征,并使用机器学习算法将四种日常活动(包括久坐、家务、步行和跑步活动)进行分类。
计算结果表明,我们开发的算法可以准确地对某些类型的日常活动进行分类,对腰戴 GENEA(0.99)和腕戴 GENEA(右手腕=0.97,左手腕=0.96)的整体分类准确率均较高。
我们已经成功开发了适用于腕戴加速度计检测某些类型体力活动的算法;其性能与腰戴加速度计评估体力活动相当。