Abstract

Information extraction from historical maps represents a persistent challenge due to inferior graphical quality and the large data volume of digital map archives, which can hold thousands of digitized map sheets. Traditional map processing techniques typically rely on manually collected templates of the symbol of interest, and thus are not suitable for large-scale information extraction. In order to digitally preserve such large amounts of valuable retrospective geographic information, high levels of automation are required. Herein, we propose an automated machine-learning based framework to extract human settlement symbols, such as buildings and urban areas from historical topographic maps in the absence of training data, employing contemporary geospatial data as ancillary data to guide the collection of training samples. These samples are then used to train a convolutional neural network for semantic image segmentation, allowing for the extraction of human settlement patterns in an analysis-ready geospatial vector data format. We test our method on United States Geological Survey historical topographic maps published between 1893 and 1954. The results are promising, indicating high degrees of completeness in the extracted settlement features (i.e., recall of up to 0.96, F-measure of up to 0.79) and will guide the next steps to provide a fully automated operational approach for large-scale geographic feature extraction from a variety of historical map series. Moreover, the proposed framework provides a robust approach for the recognition of objects which are small in size, generalizable to many kinds of visual documents.

Highlights

  • Historical maps constitute unique sources of retrospective geographic information

  • Traditional topographic map processing techniques based on manually created templates of the cartographic symbols of interest cannot be applied for information extraction from such large archives, holding map content of high levels of heterogeneity

  • Three recent developments are currently changing the field of map processing: 1) An increasing availability of large amounts of scanned, often georeferenced historical maps [39], 2) advances in computer-vision based information extraction using machine learning [40], and 3) increasing availability of digital geospatial data [41] that can be used as ancillary data to support symbol sample collection

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Summary

Introduction

Historical maps constitute unique sources of retrospective geographic information. Recently, several archives containing historical map series covering large spatial and temporal extents have been systematically scanned and made available to the public (e.g., [1]–[4]). A. MAP PROCESSING Map processing, a branch of document analysis, focuses on developing methods for the extraction and recognition of information in scanned map documents such as printed engineering drawings, floor plans, cadastral and topographic maps published prior to the era of digital cartography and systematic earth observation. MAP PROCESSING Map processing, a branch of document analysis, focuses on developing methods for the extraction and recognition of information in scanned map documents such as printed engineering drawings, floor plans, cadastral and topographic maps published prior to the era of digital cartography and systematic earth observation It combines elements of computer vision, pattern recognition, geographic information science, cartography, and geoinformatics. Three recent developments are currently changing the field of map processing: 1) An increasing availability of large amounts of scanned, often georeferenced historical maps [39], 2) advances in computer-vision based information extraction using (deep) machine learning [40], and 3) increasing availability of digital geospatial data [41] that can be used as ancillary data to support symbol sample collection

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