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室内位置数据追踪人类行为:范围综述。

Indoor Location Data for Tracking Human Behaviours: A Scoping Review.

机构信息

KITE-Toronto Rehabilitation Institute, University Health Network, Toronto, ON M5G 2A2, Canada.

Department of Aerospace Engineering, Ryerson University, Toronto, ON M5B 2K3, Canada.

出版信息

Sensors (Basel). 2022 Feb 5;22(3):1220. doi: 10.3390/s22031220.

Abstract

Real-time location systems (RTLS) record locations of individuals over time and are valuable sources of spatiotemporal data that can be used to understand patterns of human behaviour. Location data are used in a wide breadth of applications, from locating individuals to contact tracing or monitoring health markers. To support the use of RTLS in many applications, the varied ways location data can describe patterns of human behaviour should be examined. The objective of this review is to investigate behaviours described using indoor location data, and particularly the types of features extracted from RTLS data to describe behaviours. Four major applications were identified: health status monitoring, consumer behaviours, developmental behaviour, and workplace safety/efficiency. RTLS data features used to analyse behaviours were categorized into four groups: dwell time, activity level, trajectory, and proximity. Passive sensors that provide non-uniform data streams and features with lower complexity were common. Few studies analysed social behaviours between more than one individual at once. Less than half the health status monitoring studies examined clinical validity against gold-standard measures. Overall, spatiotemporal data from RTLS technologies are useful to identify behaviour patterns, provided there is sufficient richness in location data, the behaviour of interest is well-characterized, and a detailed feature analysis is undertaken.

摘要

实时定位系统 (RTLS) 记录个体随时间变化的位置,是可以用来了解人类行为模式的时空数据的宝贵来源。位置数据广泛应用于各种领域,从定位个体到接触者追踪或监测健康标志物。为了支持 RTLS 在许多应用中的使用,应该检查位置数据描述人类行为模式的各种方式。本综述的目的是调查使用室内位置数据描述的行为,特别是从 RTLS 数据中提取的用于描述行为的特征类型。确定了四个主要应用领域:健康状况监测、消费者行为、发育行为和工作场所安全/效率。用于分析行为的 RTLS 数据特征分为四类:逗留时间、活动水平、轨迹和接近度。提供非均匀数据流和复杂度较低特征的被动传感器很常见。很少有研究同时分析两个以上个体之间的社交行为。不到一半的健康状况监测研究针对金标准措施检查了临床有效性。总的来说,RTLS 技术的时空数据可用于识别行为模式,但前提是位置数据具有足够的丰富性、感兴趣的行为特征得到很好的描述,并且进行了详细的特征分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/435a/8839091/b2f593f0c8d4/sensors-22-01220-g001.jpg

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