Program in Media Arts and Sciences2Using Machine Learning for Real-time Activity Recognition and Estimation of Energy Expenditure (2008)
BibTeX
@MISC{Tapia08programin,
author = {Emmanuel Munguia Tapia and Kent Larson and Deb Roy and Emmanuel Munguia Tapia},
title = {Program in Media Arts and Sciences2Using Machine Learning for Real-time Activity Recognition and Estimation of Energy Expenditure},
year = {2008}
}
OpenURL
Abstract
Obesity is now considered a global epidemic and is predicted to become the number one preventive health threat in the industrialized world. Presently, over 60 % of the U.S. adult population is overweight and 30 % is obese. This is of concern because obesity is linked to leading causes of death, such as heart and pulmonary diseases, stroke, and type 2 diabetes. The dramatic rise in obesity rates is attributed to an environment that provides easy access to high caloric food and drink and promotes low levels of physical activity. Unfortunately, many people have a poor understanding of their own daily energy (im)balance: the number of calories they consume from food compared with what they expend through physical activity. Accelerometers offer promise as an objective measure of physical activity. In prior work they have been used to estimate energy expenditure and activity type. This work further demonstrates how wireless accelerometers can be used for real-time automatic recognition of physical activity type, intensity, and duration and estimation of energy expenditure. The parameters of the algorithms such as type of classifier/regressor, feature set, window length, signal preprocessing, sensor set utilized







