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Estoa. Revista de la Facultad de Arquitectura y Urbanismo de la Universidad de Cuenca

versión On-line ISSN 1390-9274versión impresa ISSN 1390-7263

Resumen

ALACAM, Sema; KARADAG, Ilker  y  GUZELCI, Orkan Zeynel. Reciprocal style and information transfer between historical Istanbul Pervititch Maps and satellite views using machine learning. Estoa [online]. 2022, vol.11, n.22, pp.97-113. ISSN 1390-9274.  https://doi.org/10.18537/est.v011.n022.a06.

Historical maps contain significant data on the cultural, social, and urban character of cities. However, most historical maps utilize specific notation methods that differ from those commonly used today and converting these maps to more recent formats can be highly labor-intensive. This study is intended to demonstrate how a machine learning (ML) technique can be used to transform old maps of Istanbul into spatial data that simulates modern satellite views (SVs) through a reciprocal map conversion framework. With this aim, the Istanbul Pervititch Maps (IPMs) made by Jacques Pervititch in 1922-1945 and current SVs were used to test and evaluate the proposed framework. The study consists of a style and information transfer in two stages: (i) from IPMs to SVs, and (ii) from SVs to IPMs using CycleGAN (a type of generative adversarial network). The initial results indicate that the proposed framework can transfer attributes such as green areas, construction techniques/ materials, and labels/tags.

Palabras clave : Istanbul Pervititch Maps; artificial intelligence; machine learning; semantic segmentation; CycleGAN.

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