Xia Ying, Cheung Vivian, Garcia Elsa, Ding Hang, Karunaithi Mohan
The Australian E-Health Research Centre, CSIRO ICT Centre, Brisbane, Australia.
Stud Health Technol Inform. 2011;168:188-94.
Physical activity classification is an objective approach to assess levels of physical activity, and indicates an individual's degree of functional ability. It is significant for a number of the disciplines, such as behavioural sciences, physiotherapy, etc. Accelerometry is found to be a practical and low cost method for activity classification that could provide an objective and efficient measurement of people's daily activities.
This paper utilises a mobile phone with a built-in tri-axial accelerometer sensor to automatically classify normal physical activities. A rule-based activity classification model, which can recognise 4 common daily activities (lying, walking, sitting, and standing) and 6 transitions between postural orientations, is introduced here. In this model, three types of statuses (walking/ transition, lying, and sitting/standing) are first classified based on the kinetic energy and upright angle. Transitions are then separated from walking and assigned to the corresponding type using upright angle algorithm. To evaluate the performance of this developed application, a trial is designed with 8 healthy adult subjects, who are required to perform a 6-minute activity routine with an iPhone fixed at the waist position.
Based on the evaluation result, our application measures the length of time of each activity accurately and the achieved sensitivity of each activity classification exceeds 90% while the achieved specificity exceeds 96%. Meanwhile, regarding the transition identification, the sensitivities are high in stand-to-sit (80%) and low in sit-to-stand (56%).
身体活动分类是评估身体活动水平的一种客观方法,它能表明个体的功能能力程度。这对行为科学、物理治疗等多个学科都具有重要意义。加速度计被认为是一种用于活动分类的实用且低成本的方法,它能够对人们的日常活动进行客观且高效的测量。
本文利用一部内置三轴加速度计传感器的手机来自动对正常身体活动进行分类。这里介绍了一种基于规则的活动分类模型,该模型能够识别4种常见的日常活动(躺、走、坐和站)以及6种姿势方向之间的转换。在这个模型中,首先根据动能和直立角度对三种状态(行走/转换、躺以及坐/站)进行分类。然后使用直立角度算法将转换从行走中分离出来并分配到相应类型。为了评估这个开发应用程序的性能,设计了一项试验,8名健康成年受试者参与其中,要求他们将一部iPhone固定在腰部位置进行6分钟的日常活动。
基于评估结果,我们的应用程序能够准确测量每项活动的时长,每种活动分类所达到的灵敏度超过90%,特异性超过96%。同时,关于转换识别,从站到坐的灵敏度较高(80%),而从坐到站的灵敏度较低(56%)。