Development of a multi-wear-site, deep learning-based physical activity intensity classification algorithm using raw acceleration data.
Journal:
PloS one
Published Date:
Jan 1, 2024
Abstract
BACKGROUND: Accelerometers are widely adopted in research and consumer devices as a tool to measure physical activity. However, existing algorithms used to estimate activity intensity are wear-site-specific. Non-compliance to wear instructions may lead to misspecifications. In this study, we developed deep neural network models to classify device placement and activity intensity based on raw acceleration data. Performances of these models were evaluated by making comparisons to the ground truth and results derived from existing count-based algorithms.