Litcius/Paper detail

The Problem of Monitoring Activities of Older People in Multi-Resident Scenarios: An Innovative and Non-Invasive Measurement System Based on Wearables and PIR Sensors

Riccardo Naccarelli, Sara Casaccia, Gian Marco Revel

2022Sensors24 citationsDOIOpen Access PDF

Abstract

This paper presents an innovative multi-resident activity detection sensor network that uses the Bluetooth Low Energy (BLE) signal emitted by tags worn by residents and passive infrared (PIR) motion sensors deployed in the house to locate residents and monitor their activities. This measurement system solves the problem of monitoring older people and measuring their activities in multi-resident scenarios. Metrics are defined to analyze and interpret the collected data to understand daily habits and measure the activity level (AL) of older people. The accuracy of the system in detecting movements and discriminating residents is measured. As the sensor-to-person distance increases, the system decreases its ability to detect small movements, while still being able to detect large ones. The accuracy in discriminating the identity of residents can be improved by up to 96% using the Decision Tree (DT) classifier. The effectiveness of the measurement system is demonstrated in a real multi-resident scenario where two older people are monitored during their daily life. The collected data are processed, obtaining the AL and habits of the older people to assess their behavior.

Topics & Concepts

Wearable computerBluetoothBluetooth Low EnergyComputer scienceActivities of daily livingActivity recognitionReal-time computingClassifier (UML)Motion sensorsInternet of ThingsDecision treeOlder peopleWireless sensor networkAccelerometerHuman–computer interactionArtificial intelligenceEmbedded systemWirelessTelecommunicationsComputer networkGerontologyMedicinePsychiatryOperating systemContext-Aware Activity Recognition SystemsTechnology Use by Older AdultsBluetooth and Wireless Communication Technologies