Full text: XVIIIth Congress (Part B3)

RECOGNITION OF HATCHED CARTOGRAPHIC PATTERNS 
Regine Brügelmann 
Institute of Photogrammetry and Remote Sensing 
University Karlsruhe 
Germany 
bru@ipf.bau-verm.uni-karlsruhe.de 
Commission Ill, Working Group 3 
KEY WORDS: Cartography, Digital, Map Interpretation, Image Understanding, Pattern Recognition, Automation 
ABSTRACT 
This paper deals with the automated interpretation of large-scaled scanned maps, using the example of the german base map 
Deutsche Grundkarte 1:5000 (DGK5). The goal is a raster-to-vector conversion of the map content. The increasing demand 
of digital data for building databases in Geographic Information Systems requires the development of powerful techniques to 
support automated map understanding. The paper presents an approach which automatically detects buildings and separates 
them from the remaining map objects. In the (mostly) black and white DGK5 map buildings are represented by their outlines 
filled with hatched patterns. In contrast to most of the existing approaches for cartographic pattern recognition, a raster based 
method is proposed. The typical sequences of black and white pixels forming the hatched patterns are used to detect the 
buildings. The used raster based methods involve the investigation of runlength encoded image rows and columns, a kind of 
directional region growing and operations of mathematical morphology. It is shown that this map understanding task can be 
solved in the raster environment up to an advanced processing stage. 
KURZFASSUNG 
Dieser Artikel befaßt sich mit der automatischen Interpretation von großmaßstäbigen gescannten Karten am Beispiel der 
Deutschen Grundkarte 1:5000 (DGK5). Ziel ist eine Raster-Vektor-Konvertierung des Karteninhalts. Der steigende Bedarf an 
digitalen Daten für den Aufbau von Datenbasen in Geoinformationssystemen erfordert die Entwicklung leistungsstarker Meth- 
oden für das automatische Kartenverstehen. Dieser Aufsatz beschreibt einen Algorithmus, der automatisch Gebäude lokalisiert 
und sie von den übrigen Kartenobjekten separiert. Gebäude werden in dieser vorwiegend schwarz-weißen Strichkarte durch ihre 
Umrisse dargestellt, die mit Schraffur gefüllt sind. Im Gegensatz zu den meisten bestehenden Arbeiten im Bereich der kar- 
tographischen Mustererkennung wird hier ein rasterbasierter Ansatz vorgeschlagen. Die typischen Abfolgen der schwarzen und 
weißen Pixel, die die Schraffur bilden, werden für die Detektion der Gebäude genutzt. Die dabei benutzten rasterbasierten Tech- 
niken umfassen die Untersuchung von lauflängenkodierten Bildzeilen bzw. -spalten, ein richtungsabhängiges Regionenwachstum 
und Operationen der Mathematischen Morphologie. Es wird gezeigt, daß die gestellte Mustererkennungsaufgabe bis zu einem 
fortgeschrittenen Stadium im Raster lösbar ist. 
1 INTRODUCTION 
1.1 Motivation 
The demand of digital information is rapidly increasing due 
to advanced computer technology and the widespread use of 
Geographic Information Systems. Each GIS application re- 
quests a georeferenced database. Existing paper maps repre- 
sent such powerful databases. Before they can be integrated 
in a GIS they have to be converted into a digital vector rep- 
resentation. This is a time-consuming process if it is done 
by manual digitizing. Scanning maps is a faster way of ob- 
taining digital data. Unfortunately the primary output of the 
scanning are raster data without any semantic information. 
Thus raster-to-vector conversion is needed as a first step. 
Image understanding algorithms can be used to facilitate 
and accelerate the raster-to-vector conversion of maps. This 
task belongs to the broad field of document image recog- 
nition which already yields good results for optical charac- 
ter recognition (OCR). Technical drawings such as engineer- 
ing drawings, graphics and maps, of course, are much more 
complex than pure alpha-numerical text information. Al- 
though some work has already been done in the field of 
automated map interpretation, e.g. (lllert, 1990), (Kasturi 
et al., 1990), (Suzuki/Yamada, 1990), (Crosilla/Piccinini, 
1991), (Antoine/Collin/Tombre, 1992), (Boatto et al., 1992), 
(Hori/Okazaki, 1992), (Ablameyko et al., 1993), (Ebi, 1993), 
82 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996 
(Yamada/ Yamamoto, 1993), (Mayer, 1994), operational sys- 
tems interpreting complex maps in satisfying quality are still 
rare. 
The presented work deals with map interpretation using im- 
age understanding algorithms aiming at automatic raster-to- 
vector conversion. Because of the high complexity of map 
graphics, the automated interpretation of the map as a whole 
document is not possible at the current stage of technology. 
Thus the presented work is focused on buildings. Spatial in- 
formation about buildings are needed in many fields such as 
regional planning or 3D modelling of urban areas. Further- 
more, digital vector data representing the shape of buildings 
can be used as apriori-knowledge to support automated anal- 
ysis of actual aerial photographs for change detection and 
map updating as it is, for instance, shown by (Quint/Bähr, 
1994), (Quint/Sties, 1995). 
1.2 Data Source 
As data source the Deutsche Grundkarte 1:5000 (DGK5) is 
used which is the primary topographic map of Germany cov- 
ering at least 8096 of the country. The DGK5 represents the 
topography as brown contours and all other objects as black 
lines and symbols. The map objects are determined by their 
shape, linewidth and relativ position. Fig.la shows a subset 
(760 by 75 metres in reality) of a scanned DGK5. 
     
  
   
  
   
  
    
   
  
   
   
  
  
  
  
  
  
  
  
  
   
  
  
  
  
   
  
   
  
  
  
  
   
   
    
   
    
   
   
    
    
   
   
   
   
   
   
    
   
  
   
   
  
  
  
   
    
   
    
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