Smart Curbs: Measuring Street Activities in Real-Time Using Computer Vision
This paper proposes a new framework to measure street activity in real-time. Our framework leverages machine learning and computer vision to classify pedestrian activities and transportation modes using images collected from moving vehicles. We apply our methodology to measure street activity in Paris for five weeks. We produce activity maps for this period showing that streets vary dramatically in their capacity to support pedestrian activity and that these differences are highly persistent. Our proposed framework can be used to measure street activities in other contexts and cities, providing urban researchers with an approach to guide planning interventions, identify infrastructural deficiencies, and inform design policies that foster active streets.