Università della Svizzera italiana (USI), Faculty of Informatics, Lugano, Switzerland.
Nokia Bell Labs, Pervasive Systems, Cambridge, United Kingdom.
Sci Data. 2022 Sep 1;9(1):537. doi: 10.1038/s41597-022-01643-5.
We present a multi-device and multi-modal dataset, called WEEE, collected from 17 participants while they were performing different physical activities. WEEE contains: (1) sensor data collected using seven wearable devices placed on four body locations (head, ear, chest, and wrist); (2) respiratory data collected with an indirect calorimeter serving as ground-truth information; (3) demographics and body composition data (e.g., fat percentage); (4) intensity level and type of physical activities, along with their corresponding metabolic equivalent of task (MET) values; and (5) answers to questionnaires about participants' physical activity level, diet, stress and sleep. Thanks to the diversity of sensors and body locations, we believe that the dataset will enable the development of novel human energy expenditure (EE) estimation techniques for a diverse set of application scenarios. EE refers to the amount of energy an individual uses to maintain body functions and as a result of physical activity. A reliable estimate of people's EE thus enables computing systems to make inferences about users' physical activity and help them promoting a healthier lifestyle.
我们提出了一个名为 WEEE 的多设备多模态数据集,该数据集是从 17 名参与者在进行不同身体活动时收集的。WEEE 包含:(1)使用放置在四个身体部位(头部、耳朵、胸部和手腕)的七个可穿戴设备收集的传感器数据;(2)使用间接量热仪收集的作为基准信息的呼吸数据;(3)人口统计学和身体成分数据(例如,脂肪百分比);(4)身体活动的强度水平和类型,以及对应的代谢当量(MET)值;(5)参与者身体活动水平、饮食、压力和睡眠情况的问卷回答。由于传感器和身体位置的多样性,我们相信该数据集将能够为各种应用场景开发新型的人体能量消耗(EE)估计技术。EE 是指个体维持身体功能和进行身体活动所消耗的能量。因此,对人们 EE 的可靠估计可以使计算系统能够推断用户的身体活动,并帮助他们促进更健康的生活方式。