Sanborn Fire Insurance maps contain a wealth of building-level information about U.S. cities dating back to the late 19th century. They are a valuable resource for studying changes in urban environments, such as the legacy of urban highway construction and urban renewal in the 20th century. However, it is a challenge to automatically extract the building-level information effectively and efficiently from Sanborn maps because of the large number of map entities and the lack of appropriate computational methods to detect these entities. This paper contributes to a scalable workflow that utilizes machine learning to identify building footprints and associated properties on Sanborn maps. This information can be effectively applied to create 3D visualization of historic urban neighborhoods and inform urban changes. We demonstrate our methods using Sanborn maps for two neighborhoods in Columbus, Ohio, USA that were bisected by highway construction in the 1960s. Quantitative and visual analysis of the results suggest high accuracy of the extracted building-level information, with an F-1 score of 0.9 for building footprints and construction materials, and over 0.7 for building utilizations and numbers of stories. We also illustrate how to visualize pre-highway neighborhoods.
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PLoS One
June 2023
Department of Geography, The Ohio State University, Columbus, Ohio, United States of America.
Sanborn Fire Insurance maps contain a wealth of building-level information about U.S. cities dating back to the late 19th century.
View Article and Find Full Text PDFPLoS One
November 2021
Center for Computation and Visualization, Brown University, Providence, Rhode Island, United States of America.
U.S. cities contain unknown numbers of undocumented "manufactured gas" sites, legacies of an industry that dominated energy production during the late-19th and early-20th centuries.
View Article and Find Full Text PDFGenome Res
March 2020
Department of Human Genetics, Emory University School of Medicine, Atlanta, Georgia 30322, USA.
Chromatin loops are a major component of 3D nuclear organization, visually apparent as intense point-to-point interactions in Hi-C maps. Identification of these loops is a critical part of most Hi-C analyses. However, current methods often miss visually evident CTCF loops in Hi-C data sets from mammals, and they completely fail to identify high intensity loops in other organisms.
View Article and Find Full Text PDFBMC Evol Biol
May 2019
Laboratório de Citogenética, Centro de Estudos Avançados da Biodiversidade, Universidade Federal do Pará, Av. Perimetral, sn. Guamá, Belém, Pará, 66077, Brasil.
Background: The Micronycterinae form a subfamily of leaf-nosed bats (Phyllostomidae) that contains the genera Lampronycteris Sanborn, 1949, and Micronycteris Gray, 1866 (stricto sensu), and is characterized by marked karyotypic variability and discrepancies in the phylogenetic relationships suggested by the molecular versus morphological data. In the present study, we investigated the chromosomal evolution of the Micronycterinae using classical cytogenetics and multidirectional chromosome painting with whole-chromosomes probes of Phyllostomus hastatus and Carollia brevicauda. Our goal was to perform comparative chromosome mapping between the genera of this subfamily and explore the potential for using chromosomal rearrangements as phylogenetic markers.
View Article and Find Full Text PDFISPRS Int J Geoinf
April 2018
Spatial Sciences Institute, University of Southern California, Los Angeles, CA 90089, USA; (Y.-Y.C.); (W.D.); (C.A.K.).
Historical maps are unique sources of retrospective geographical information. Recently, several map archives containing map series covering large spatial and temporal extents have been systematically scanned and made available to the public. The geographical information contained in such data archives makes it possible to extend geospatial analysis retrospectively beyond the era of digital cartography.
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