Switzerland Road extraction from historical maps: Difference between revisions

From FDHwiki
Jump to navigation Jump to search
Line 64: Line 64:


*Sample patch and label
*Sample patch and label
[[File:Patch17 1704.jpg|400px|frame|Bischofszell]]
[[File:Patch17 1704.jpg|frame|Bischofszell|400px|]]
[[File:17 1074label.png|400px]]
[[File:17 1074label.png|400px]]



Revision as of 18:40, 24 November 2021

Introduction

Historical maps provide valuable information about spatial transformation of the landscape over time spans. This project, based on historical maps of Switzerland, is to vectorize road network and landcover and to visualize the transformation using a machine vision library developed at the DHLAB.

The main data source of this project is GeoVITe (Geodata Versatile Information Transfer environment),a browser-based access to geodata for research and teaching, operated by the Institute of Cartography and Geoinformation of ETH Zurich (IKG) since 2008.

Motivation

Historical maps contain rich information, which are helpful in urban planning, historical study, and various humanities research. Digitization of massive printed documents is a significant step before further research. However, most historical maps are scanned in rasterized graphical images. To conveniently use geographic data extracted from these maps in GIS software, vectorization is needed.

However, vectorization process has always been a challenge due to manual painting. In this project, we try to use dh-segmentation tool for automatic vectorization. With 60 high-resolution patches(1km*1km) for the training dataset, the model is tested on randomly selected patches and proposed to approximate idealized main roads of Dufour map of Switzerland.

Plan and Milestones

Date Task Completion
By Week 4
  • Brainstorm, select project, and raise bold and feasible ideas
  • Present preliminary proposal and modify it according to feedbacks
By Week 6
  • Literature review on relevant road extraction research
  • Experiment on possible solutions
  • Determine overall methodology
By Week 8
  • Prepare training dataset
  • Create labels by GIMP
  • Mid-term presentation
By Week 10
By Week 12
By Week 14

Methodology

  • Dataset: Dufour Map from GeoVITE (The 1:100 000 Topographic Map of Switzerland was the first official series of maps that encompassed the whole of Switzerland. It was published in the period from 1845 to 1865 and thus coincides with the creation of the modern Swiss Confederation.)
  • DHsegment tool, a generic framework for historical document processing using Deep learning approach, created by Benoit Seguin and Sofia Ares Oliveira at DHLAB, EPFL.
  • Sample patch and label
Patch17 1704.jpg

17 1074label.png

Limitation

The main limitation of our project is due to the data source platform. GeoVITE only allows small patches downloading, while automatic downloading leads to unsatisfying low-quality images.

Results

Reference

Links

  • Github repository: [1]
  • GeoVITE :[2]