Litcius/Paper detail

Non-Wearable IoT-Based Smart Ambient Behavior Observation System

Muhammad Irfan, Husnain Jawad, Barkoum Betra Felix, Saadullah Farooq Abbasi, Anum Nawaz, Saeed Akbarzadeh, Muhammad Awais, Lin Chen, Tomi Westerlund, Wei Chen

2021IEEE Sensors Journal47 citationsDOI

Abstract

A growing number of advanced smart systems and solutions are being designed for the elderly, helping them to live longer at home. These systems need to provide unobtrusive monitoring and safety for their users and information for the healthcare professionals and family members. Multi-modal sensor data enables the possibility for in-depth behavioral analysis. To gather multi-modal data, we propose an IoT-based smart ambient behavior observation system (SABOS). SABOS provides unobtrusive monitoring of daily living activities by utilizing various sensors integrated into the residential house. To reduce the amount of data, we present a data reduction algorithm. The data reduction algorithm effectively reduces over 90% of the submitted data with full recovery in the cloud. Data is sent to ThingSpeak for MATLAB visualization and analysis to generate graphical illustrations of daily living activities. In an emergency, an “if this then that” (IFTTT) service combined with ThingSpeak triggers an applet to send a defined message to a healthcare professional or a family member.

Topics & Concepts

Wearable computerInternet of ThingsComputer scienceWearable technologyHuman–computer interactionEmbedded systemIoT-based Smart Home SystemsImpact of Light on Environment and HealthVideo Surveillance and Tracking Methods
Non-Wearable IoT-Based Smart Ambient Behavior Observation System | Litcius