“…Deep learning is used in the context of occupancy maps either for dynamic objects detection and tracking (Ondruska, Dequaire, Wang, & Posner, ), probabilistic estimation of the occupancy map surrounding the vehicle (Hoermann, Bach, & Dietmayer, ; Ramos, Gehrig, Pinggera, Franke, & Rother, ), or for deriving the driving scene context (Marina et al, ; Seeger, Müller, & Schwarz, ). In the latter case, the OG is constructed by accumulating data over time, whereas a deep neural net is used to label the environment into driving context classes, such as highway driving, parking area, or inner‐city driving.…”