Full text: Proceedings, XXth congress (Part 1)

   
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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV. Part Bl. Istanbul 2004 
  
area. This yaw correction is generating scenes with sides 
perpendicular to each other, but still rotated against the national 
net coordinate system. IKONOS and QuickBird even can 
generate images with sides parallel to the coordinate axis of the 
national coordinate system. Of course the rigorous geometric 
relation has to be respected by the mathematical model based 
on the correct imaging geometry. 
2.2 Rational polynomial functions based on sensor 
orientation 
Based on the sensor geometry and orientation, the relation 
between the image and the ground coordinates (geographic or 
national net coordinates) can be determined by a three 
dimensional interpolation in the object space with polynomials 
(Grodecki 2001). 
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Formula I. rational polynomial functions 
Usually the image coordinates are expressed with a third order 
polynomial of the national net coordinates X, Y, Z (formula 1), 
so 80 coefficients are required. Of course this is an 
approximation, but with the high number of coefficients the loss 
of accuracy against a rigorous model is negligible. The RPCs 
just based on the direct sensor orientation (sensor depending 
RPCs), have to be improved by a shift to at least one control 
point. As image coordinates also national net coordinates are 
used for geo-referenced scenes. The sensor depending RPCs 
optimally do use the available sensor information. 
2.3 Rational polynomial functions based on control points 
Not in any case the sensor based RPCs are available. With 
control points, the basic idea of a three dimensional 
interpolation can be used. Of course it is not possible to adjust 
80 coefficients - this would require at least 40 three dimensional 
well distributed control points. So the number of unknowns has 
to be reduced. This also called terrain dependent solution is 
only able to determine the lowest order terms shown in formula 
I. The number of unknowns is depending upon the number and 
distribution of control points. 
This method is not using the available, but in some cases 
restricted sensor orientation information, by this reason more 
and well distributed control points are required. If all control 
points are located in the same height level, the position of 
points in a different elevation cannot be determined. So the 
control points are required three-dimensionally distributed 
around the area of mapping. In general an extrapolation out of 
the area of the control points has to be avoided. Even the low 
order polynomials can lead to extreme errors and random errors 
at the control points are enlarged outside the controlled area. 
2.4 Three dimensional affinity transformation 
The high resolution space sensors do have a small view angle, 
allowing the replacement of the perspective geometry in the 
CCD-line by a three dimensional affinity transformation 
(formula 2). This model can be improved by some corrections 
for a sufficient use of the perspective geometry in the CCD-line 
direction. 
X = A+ AX+A;Y + A4, Formula 2: 3D-affinity 
y = Ast AX + AY + AgZ transformation 
Like the RPCs based on control points, the orientation 
information of the sensor is not used and the control points must 
be located three dimensional around the mapping area. This is 
often causing problems in mountainous arcas because the 
control points are usually located in the valleys or lower areas 
and not on top the mountains, leading to geometric problems of 
the more elevated areas. 
2.5 Reconstruction of the imaging geometry 
  
   
    
m 
pe ERIS 
  
  
  
Figure 3. geometric situation of IKONOS Geo, QuickBird 
OrthoReady and other level 1B-type images 
  
With the exception of the QuickBird Standard Imagery, the 
level 1B-type images like IKONOS (CARTERRA) Geo and 
QuickBird OrthoReady are projections to a plane with constant 
height. In all cases the azimuth and the incidence angle from the 
scene centre to the satellite are directly or indirectly available, 
allowing a reconstruction of the imaging geometry using also 
the published information about the sensor orbit. This has to 
respect also the change of the view direction in relation to the 
orbit during imaging with the extreme case of the imaging 
against the sensor movement (figure 2). The rectified images 
are usually available with the georeference. This may be given 
directly for any pixel like for IKONOS and QuickBird or the 
corner positions of the scenes are known and a transformation 
between ground and pixel positions is required for the 
georeference of any pixel. Depending upon the data set a 
similarity, an affinity or a perspective transformation is 
necessary. 
Based on the reconstructed sensor geometry, the view direction 
for any scene position can be calculated and based on the height 
   
   
  
  
   
   
   
    
   
  
   
  
  
   
   
   
     
     
    
  
  
  
  
  
   
  
   
  
  
  
  
   
    
  
  
  
  
   
  
    
    
     
   
  
    
  
   
   
   
   
    
  
    
   
    
    
   
   
     
 
	        
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