“…Such recent efforts include the mining of (historical) map collections by their content or associated metadata [ 32 - 37 ], automated georeferencing [ 18 , 38 - 40 ] and alignment [ 41 , 42 ], text detection and recognition [ 43 - 45 ], and the extraction of thematic map content, often involving (deep) machine learning methods, focusing on specific geographic features such as forest [ 46 ], railroads [ 33 , 47 ], road network intersections [ 48 , 49 ] and road types [ 50 ], archeological content [ 51 ] and mining features [ 52 ], cadastral parcels boundaries [ 53 , 54 ], wetlands and other hydrographic features [ 55 , 56 ], linear features in general [ 57 ], land cover/land use [ 58 ], urban street networks and city blocks [ 34 ], building footprints [ 13 , 59 , 60 ], and historical human settlement patterns [ 61 - 63 ]. Other approaches use deep-learning-based computer vision for generic segmentation of historical maps [ 64 , 65 ], generative machine learning approaches for map style transfer [ 66 , 67 ], or attempt to mimic historical overhead imagery based on historical maps [ 68 ].…”