Full text: Proceedings, XXth congress (Part 7)

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International Archives of the Photog,.smmetry, Remote Sensin g and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
  
  
  
  
  
  
  
  
  
   
   
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Fig. 6 Edge mapper. (a) QuickBird, (b) Ikonos, (c) aerial imagery. 
  
  
The overall characteristics of the colour morphological 
operations are similar to that in grayscale case, i.e., the colour 
dilation eliminates ‘dark’ details, where the vectors have 
smaller rank than its surroundings, enhance ‘light’ details, 
where the vectors have larger rank than its surroundings, 
reduces ‘dark’ objects and enlarges ‘light’ objects; the colour 
erosion eliminates ‘light’ details, enhances ‘dark’ details, 
reduces ‘light’ objects, and enlarges ‘dark’ objects; the colour 
closing typically eliminates ‘dark’ details, and the colour 
opening eliminates ‘light’ objects. The results of the proposed 
colour edge detector using simply Euclidean distance as the 
vector norm are shown in Fig. 4. All building roofs in the three 
scenes have been extracted. 
7. DISCUSSION AND OUTLOOK 
A novel approach to colour mathematical morphology based on 
principal component analysis has been presented. The general 
design of colour mathematical morphology is conceptually 
sound and the algorithms were tested with phansharpened Im 
Ikonos and 61 cm QuickBird satellite images and colour aerial 
imagery acquired over a built-up area in Toronto, Ontario. The 
proposed method extended the greyscale morphology to the 
colour morphology and provided its promising performance in 
colour image processing and feature extraction. Preliminary 
investigations suggest that building extraction can be 
automatically performed by using the developed colour edge 
detector. However, we didn’t report those results because of 
space limitations. Detailed discussion is being presented in 
another publication. In future, the main focus will be on the 
roof extraction and aim at a global robust adjustment including 
the regularities of roof structure. Automatic procedures may fail 
in recovering the correct information due to the complexity of 
the task. Therefore, interactive tools for editing the extracted 
results are necessary. Future work will also include handling of 
road networks using the proposed method within an ongoing 
project on automated manmade object extraction from high- 
resolution colour satellite imagery. A strategy that integrates 
multiple cues including colour and attributed edges in a GIS 
environment will be invested and tested. 
1173 
Acknowledgements: 
This research was supported by the Canada Foundation for 
Innovation (CFI) and the Natural Science and 
Engineering Research Council of Canada (NSERC). 
Tony Sani of Spatial Geo-Link, Inc., and Yubin Xin of 
PCI Geomatics, Inc., are greatly acknowledged to 
provide test images. 
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