Estimating city-level travel patterns using street imagery: A case study of using Google Street View in Britain.
Rahul GoelLeandro Martin Totaro GarciaAnna GoodmanRob JohnsonRachel AldredManoradhan MurugesanSoren BrageKavi BhallaJames WoodcockPublished in: PloS one (2018)
GSV images are a promising new big data source to predict urban mobility patterns. Predictive power was the greatest for those modes that varied the most (cycle and bus). With its ability to identify mode of travel and capture street activity often excluded in routinely carried out surveys, GSV has the potential to be complementary to new and traditional data. With half the world's population covered by street imagery, and with up to 10 years historical data available in GSV, further testing across multiple settings is warranted both for cross-sectional and longitudinal assessments.