Full text: Proceedings, XXth congress (Part 3)

   
HIGH 
RALIA 
photogrammetric 
imagery, which 
data suppliers do 
| surface models 
re the geometric 
are presented of 
lied to two very 
a, showed height 
t both geometric 
at results cannot 
] photography (a 
t al, 2002a). 
hich investigated 
onos images. In 
used to constrain 
erent geometric 
straint, based on 
id can be applied 
oned to epipolar 
d on the affine 
ich like rational 
space coordinates 
ained by limiting 
nadir lines in the 
| to two Ikonos 
vantages of each 
AODEL 
nilar to the RPC 
es to object space 
sensor model or 
n of the model 
3D object space 
int i is expressed 
(1) 
er image, these 
uniform scaling 
) projections, one 
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004 
scaled-orthogonal and the other skew-parallel. With high 
resolution satellite imaging systems such as Ikonos and 
Quickbird with narrow fields of view, the assumption that the 
projection is parallel rather than perspective has been shown in 
practical tests to be sufficiently valid (Fraser et al., 2002b). In 
the reported implementation of the affine projective model, all 
model parameters are recovered simultaneously along with 
triangulated ground point coordinates in a process analogous to 
photogrammetric bundle adjustment. 
3. DATA USED IN THIS STUDY 
Two pairs of satellite images were used in this study. Firstly a 
stereo pair of Ikonos images, resampled according to epipolar 
geometry by the data supplier and covering a 7 x 7 km area 
over the city of Melbourne, Australia, was selected. The terrain 
does not vary significantly in the area, with the lowest point at 
sea level and the highest point at about 50m above sea level. 
The Central Business District is located at the centre of the 
area, and contains buildings up to 250m tall. About 15% of the 
imagery depicts water at sea level. One of the images from the 
stereopair is shown in figure |. 
  
Figure 1. Ikonos image of Melbourne 
The second image pair used in this study was a non-epipolar 
Ikonos stereopair of San Diego, USA. Although this image pair 
covered a wide ground area, a much smaller area of 
approximately 7km x Skm was extracted. This sub-sampled 
region was chosen in order to provide a very different test area 
to the Melbourne data. Consequently it features mountainous 
terrain, vegetation land cover and no urbanisation. One image 
of this stereopair is shown in figure 2. 
  
Figure 2. Ikonos image of mountainous region near San Diego 
For each data set, the parameters of the affine projective models 
were calculated using GPS-surveyed ground control points. 
Most of the ground control points observed were road 
roundabout centres, easily measured in image space by taking 
the centroids of ellipses fitted to multiple edge points around 
each roundabout. The remaining control points were. road and 
building corners and other distinct features conducive to high 
precision measurement in both object space and image space. 
4. GEOMETRICALLY CONSTRAINED IMAGE 
MATCHING 
4.1 Background 
In any image matching process there are generally three key 
steps: selection of candidate points; definition of search space; 
and, comparison of similarity measures. The most important, in 
terms of practical implementation, is the definition of the search 
space. By choosing the appropriate search space, computation 
time is kept to a minimum and the potential for finding blunders 
is reduced. In typical image space matching the search space is 
a two dimensional area centred on the pixel being matched. The 
search area has to be large enough to ensure the correct match 
can be found, but not too large that the processing time 
becomes computationally absurd. Thus, any way of reducing 
the search space, but retaining the guarantee of the existence of 
a correct match, is a significant improvement to any matching 
algorithm. This is what geometric constraints aim to achieve. 
4.2 Epipolar constraint 
The most common geometric constraint used in image matching 
is the epipolar constraint, which allows the search space to be 
reduced from a two dimensional area to a one dimensional line. 
By reducing the search space in this way, the speed of matching 
algorithms can be increased by an order of magnitude, and the 
chances of finding blunders is greatly reduced. With aerial 
photography, epipolar lines in stereo images are usually 
determined from a knowledge of the EO parameters. With high 
resolution satellite imaging the EO is generally unknown, 
meaning that the imagery must be purchased in its normalized 
(i.e. epipolar projected) form. 
Matching points in a stereopair of images that are aligned to 
epipolar geometry is a simple task since it only involves a one 
dimensional search space. However, by taking advantage of the 
epipolar geometry it is assumed that the alignment to epipolar 
geometry is error-free. Since the normalization of the Ikonos 
imagery has been carried out by the supplier of the data (Space 
    
  
  
  
  
  
  
  
   
   
  
  
  
   
   
      
     
   
   
   
   
  
  
   
   
  
  
  
  
  
   
  
   
  
  
   
   
   
  
   
  
  
  
  
   
  
    
   
   
   
   
   
  
   
   
  
  
   
   
     
	        
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