Machine Learning-Based Unobtrusive Intake Gesture Detection via Wearable Inertial Sensors

Loading...
Thumbnail Image

Date

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE Computer Society

Abstract

Dietary patterns can be the primary reason for many chronic diseases such as diabetes and obesity. State-of-the-art wearable sensor technologies can play a critical role in assisting patients in managing their eating habits by providing meaningful statistics on critical parameters such as the onset, duration, and frequency of eating. For an accurate yet fast food intake recognition, this work presents a novel Machine Learning (ML) based framework that shows promising results by leveraging optimized support vector machine (SVM) classifiers. The SVM classifiers are trained on three comprehensive datasets: OREBA, FIC, and CLEMSON. The developed framework outperforms existing algorithms by achieving F1-scores of 92%, 94%, 95%, and 85% on OREBA-SHA, OREBA-DIS, FIC, and CLEMSON datasets, respectively. In order to assess the generalization aspects, the proposed SVM framework is also trained on one of the three databases while being tested on the others and achieves acceptable F1-scores in all cases. The proposed algorithm is well suited for real-time applications since inference is made using a few support vector parameters compared to thousands in peer deep neural networks models. © 2022 IEEE.

Description

Keywords

Biomedical signal processing, Eating habits, K-nearest neighbors, Kalman filter, Obesity, Support vector machines, Wearable sensors, Zero-velocity update, Algorithms, Gestures, Humans, Machine learning, Neural networks, computer, Wearable electronic devices, Accelerometers, Bayesian networks, Classification (of information), Deep neural networks, Inference engines, Kalman filters, Nearest neighbor search, Nutrition, Vectors, Biomedical signals processing, Features extraction, Machine-learning, Support vectors machine, Wrist, Zero velocity, Article, Deep neural network, Dietary pattern, Eating habit, Gesture, Human, Recognition, Algorithm, Electronic device

Citation

Endorsement

Review

Supplemented By

Referenced By