학술논문

SenseHunger: Machine Learning Approach to Hunger Detection Using Wearable Sensors.
Document Type
Article
Source
Sensors (14248220). Oct2022, Vol. 22 Issue 20, pN.PAG-N.PAG. 21p.
Subject
*HUNGER
*MEMES
*MACHINE learning
*WEARABLE technology
*MULTIMODAL user interfaces
*BLOOD volume
*SIGNAL processing
*FEATURE extraction
Language
ISSN
1424-8220
Abstract
The perception of hunger and satiety is of great importance to maintaining a healthy body weight and avoiding chronic diseases such as obesity, underweight, or deficiency syndromes due to malnutrition. There are a number of disease patterns, characterized by a chronic loss of this perception. To our best knowledge, hunger and satiety cannot be classified using non-invasive measurements. Aiming to develop an objective classification system, this paper presents a multimodal sensory system using associated signal processing and pattern recognition methods for hunger and satiety detection based on non-invasive monitoring. We used an Empatica E4 smartwatch, a RespiBan wearable device, and JINS MEME smart glasses to capture physiological signals from five healthy normal weight subjects inactively sitting on a chair in a state of hunger and satiety. After pre-processing the signals, we compared different feature extraction approaches, either based on manual feature engineering or deep feature learning. Comparative experiments were carried out to determine the most appropriate sensor channel, device, and classifier to reliably discriminate between hunger and satiety states. Our experiments showed that the most discriminative features come from three specific sensor modalities: Electrodermal Activity (EDA), infrared Thermopile (Tmp), and Blood Volume Pulse (BVP). [ABSTRACT FROM AUTHOR]