Authors
Alberto Faro, Daniela Giordano, Mario Venticinque
Publication date
2021/1/27
Conference
2020 IEEE International Conference on Internet of Things and Intelligence System (IoTaIS)
Pages
161-166
Publisher
IEEE
Description
Aim of the paper is to demonstrate how finding the proper mental stress model and its dependencies on context using Machine Learning technologies resident on edge devices to allow the user and remote medical staff to continuously monitor and control the user stress status. To this aim, the paper first discusses the method used to measure the mental stress inspired by tools available on the market, secondly it illustrates how the sensed bio-data should be preprocessed on an edge device to support the first control actions. Finally it shows how such data may used to derive a stress model of the user using a machine learning algorithm on edge devices and/or computing server. An example illustrates the proposed methodology, how this model can be tuned depending on context using the data collected by the wearable monitoring device, and how the entire system can be implemented on few interconnected micro …
Scholar articles
A Faro, D Giordano, M Venticinque - 2020 IEEE International Conference on Internet of …, 2021