“…The addition of time in place‐based methods allows the study of the evolution of emotions framed in and from places. In urban analytics, longitudinal studies, based on proxy data (e.g., Twitter, smartcard data), of individuals' movements across the city have shown how to deal with mobility models and networks (Barbosa et al, 2018), space–time prisms (Senaratne et al, 2017), and detect mobility patterns over a prolonged time period (Kandt & Batty, 2021; Kandt & Leak, 2019; Santa et al, 2019). Yet, the use of objective data has taken a rise with the use of GPS sensors in smartphones and wearables; for example, speed, travel time and delay for intersections and road segments (Strauss & Miranda‐Moreno, 2017), traffic and road condition estimation (Bhoraskar et al, 2012), pothole detection (Xue et al, 2016), and fall detection in urban contexts (Lee et al, 2018).…”