Author:
Koemel Nicholas A.,Biswas Raaj K.,Ahmadi Matthew N.,Stamatakis Emmanuel
Abstract
ABSTRACTThe use of semi-supervised learning approaches can be used to extend a base-level classifier and offers a significant advantage by reducing the need for extensive labeled datasets. We utilized a two-stage semi-supervised learning model to classify physical activity intensity for wrist and thigh worn monitors, by retraining a base classifier with free-living wearable sensor data. Data was collected in two-phases comprising a laboratory and free-living session. Total classified time spent in light intensity, moderate intensity, and vigorous intensity were not significantly different from ground-truth minutes for either placement. The machine learning classifiers re-trained on free-living data accurately predicted light, moderate and vigorous intensity between both device placements. These findings demonstrate that similar estimates of physical activity intensity can be correctly classified for wrist and thigh placements when using semi-supervised techniques.
Publisher
Cold Spring Harbor Laboratory