| Literature DB >> 27170901 |
Amit Pande, Jindan Zhu, Aveek K Das, Yunze Zeng, Prasant Mohapatra, Jay J Han.
Abstract
Energy expenditure (EE) estimation is an important factor in tracking personal activity and preventing chronic diseases, such as obesity and diabetes. Accurate and real-time EE estimation utilizing small wearable sensors is a difficult task, primarily because the most existing schemes work offline or use heuristics. In this paper, we focus on accurate EE estimation for tracking ambulatory activities (walking, standing, climbing upstairs, or downstairs) of a typical smartphone user. We used built-in smartphone sensors (accelerometer and barometer sensor), sampled at low frequency, to accurately estimate EE. Using a barometer sensor, in addition to an accelerometer sensor, greatly increases the accuracy of EE estimation. Using bagged regression trees, a machine learning technique, we developed a generic regression model for EE estimation that yields upto 96% correlation with actual EE. We compare our results against the state-of-the-art calorimetry equations and consumer electronics devices (Fitbit and Nike+ FuelBand). The newly developed EE estimation algorithm demonstrated superior accuracy compared with currently available methods. The results were calibrated against COSMED K4b2 calorimeter readings.Entities:
Keywords: Accelerometer; barometer; energy expenditure; machine learning
Year: 2015 PMID: 27170901 PMCID: PMC4848104 DOI: 10.1109/JTEHM.2015.2480082
Source DB: PubMed Journal: IEEE J Transl Eng Health Med ISSN: 2168-2372 Impact factor: 3.316