» Articles » PMID: 35161964

Indoor Location Data for Tracking Human Behaviours: A Scoping Review

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2022 Feb 15
PMID 35161964
Authors
Affiliations
Soon will be listed here.
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.

Citing Articles

Multisensory System for Long-Term Activity Monitoring to Facilitate Aging-in-Place.

Lluva-Plaza S, Jimenez-Martin A, Gualda-Gomez D, Villadangos-Carrizo J, Garcia-Dominguez J Sensors (Basel). 2023; 23(20).

PMID: 37896739 PMC: 10611293. DOI: 10.3390/s23208646.


Indoor Content Delivery Solution for a Museum Based on BLE Beacons.

Verde D, Romero L, Faria P, Paiva S Sensors (Basel). 2023; 23(17).

PMID: 37687859 PMC: 10490640. DOI: 10.3390/s23177403.


A TinyML Deep Learning Approach for Indoor Tracking of Assets.

Avellaneda D, Mendez D, Fortino G Sensors (Basel). 2023; 23(3).

PMID: 36772582 PMC: 9921810. DOI: 10.3390/s23031542.


Real-time location systems technology in the care of older adults with cognitive impairment living in residential care: A scoping review.

Haslam-Larmer L, Shum L, Chu C, McGilton K, McArthur C, Flint A Front Psychiatry. 2022; 13:1038008.

PMID: 36440422 PMC: 9685159. DOI: 10.3389/fpsyt.2022.1038008.

References
1.
Kaye J, Mattek N, Dodge H, Buracchio T, Austin D, Hagler S . One walk a year to 1000 within a year: continuous in-home unobtrusive gait assessment of older adults. Gait Posture. 2011; 35(2):197-202. PMC: 3278504. DOI: 10.1016/j.gaitpost.2011.09.006. View

2.
Messinger D, Prince E, Zheng M, Martin K, Mitsven S, Huang S . Continuous measurement of dynamic classroom social interactions. Int J Behav Dev. 2024; 43(3):263-270. PMC: 11178315. DOI: 10.1177/0165025418820708. View

3.
Grigorovich A, Kulandaivelu Y, Newman K, Bianchi A, Khan S, Iaboni A . Factors Affecting the Implementation, Use, and Adoption of Real-Time Location System Technology for Persons Living With Cognitive Disabilities in Long-term Care Homes: Systematic Review. J Med Internet Res. 2021; 23(1):e22831. PMC: 7857945. DOI: 10.2196/22831. View

4.
Bowen M, Rowe M . Wandering Behaviors and Activities of Daily Living Among Older Adults With Cognitive Impairment. Rehabil Nurs. 2018; 44(5):282-289. DOI: 10.1097/rnj.0000000000000148. View

5.
Dawadi P, Cook D, Schmitter-Edgecombe M . Modeling Patterns of Activities using Activity Curves. Pervasive Mob Comput. 2016; 28:51-68. PMC: 4918097. DOI: 10.1016/j.pmcj.2015.09.007. View