Obesity is currently affecting very large portions of the global population.
Effective prevention and treatment starts at the early age and requires
objective knowledge of population-level behavior on the region/neighborhood
scale. To this end, we present a system for extracting and collecting
behavioral information on the individual-level objectively and automatically.
The behavioral information is related to physical activity, types of visited
places, and transportation mode used between them. The system employs
indicator-extraction algorithms from the literature which we evaluate on
publicly available datasets. The system has been developed and integrated in
the context of the EU-funded BigO project that aims at preventing obesity in
young populations.Comment: Accepted version to be published in 2020, 42nd Annual International
Conference of the IEEE Engineering in Medicine and Biology Society (EMBC),
Montreal, Canad