Full text: Proceedings, XXth congress (Part 8)

2004 
the 
spot 
{ric 
sen, 
cial 
nate 
the 
dis 
nost 
etric 
and 
| the 
is of 
the 
IS 
that 
over 
ntrol 
jents 
area. 
and 
ntrol 
not 
ss of 
yd of 
d on 
able 
n arc 
osest 
es of 
value 
es of 
value 
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B-YF. Istanbul 2004 
  
In this project, Bicubic interpolation is selected, because this 
method sharpens the image and smoothes out noise and 
simultaneously the loss of image information is eliminated. 
3.5 Results 
The expected results of the process of rectification should be 
near to sub pixel and this is achieved in this project, as it is 
shown to the below tables: 
  
  
  
X residual Y residual RMS Error 
(pixel) (pixel) (pixel) 
Control Point 0,6166 0,6503 0,8962 
Check Point 0,5944 0,6139 0,8545 
  
  
  
  
  
  
Table 2. The rectification results of the panchromatic image 
  
  
  
  
  
  
  
  
X residual Y residual RMS Error 
(pixel) (pixel) (pixel) 
Control Point 0,7526 0,4541 0,8450 
Check Point 0,7835 0,4715 0,9145 
  
Table 3. The rectification results of the multispectral image 
3.6 Check of the produced orthoimages 
Finally, the resulted two orthoimages are tested in order to 
assess their accuracy, by measuring and comparing the image 
coordinates of control points to the known coordinates of the 
available orthophotos. The chosen 20 points are well distributed 
all over the area. The standard deviation is 8,9m for the 
panchromatic image and 4,7m for the multispectral. 
4. FUSION 
It is often desirable to simultaneously require high spatial and 
spectral analysis in a single image. This is accomplished with 
the process of fusion. Fusion combines data from different 
sensors with dissimilar resolution and provides images with 
increased interpretation capabilities. 
The images have to be rectified in the same reference system, 
cover the exactly same area and have the same dimensions (the 
same number of pixels / row and pixels / column), in order to be 
fused. Firstly, it is necessary to registrate the low-resolution 
image on the high-resolution image, so as to be possible to 
compare these two images pixel by pixel. Moreover, it is 
essential that the images have been orthorectified for the more 
accurate pixel-by-pixel corresponding, especially in the case of 
mountainous areas. 
41 Preparation of the images 
First of all the low-resolution orthorectified image is registered 
to the high-resolution orthorectified image, for the absolute 
coincidence of pixels. It is also necessary to define the exact 
area of study in the two images; with view to obtain the corner 
pixels of the two images the exact same cartographic 
coordinates. 
After these preparations the two images are ready to be fused 
with the principal components analysis (PCA). 
141 
4.2 The principal components analysis (PCA) 
In fusion with the PCA technique, the new band PCI can be 
replaced by the panchromatic. This is possible because they are 
considered to have the same spectral characteristics. By 
inversion of the new principal components the result is one 
synthetic image, which maintains the spatial characteristics of 
the panchromatic image, and at the same time has the spectral 
information of the multispectral. That is a synthetic image with 
spatial resolution 10m. 
  
  
  
  
  
Figure 4. The synthetic image 
4.3 Evaluation of the spectral and spatial quality of the 
synthetic image 
In order to be more reliable and useful the synthetic image it is 
important to valuate its spectral and spatial quality. The 
comparison of the synthetic image to original multispectral is 
accomplished under some certain conditions. The two 
compared images must have the same spatial analysis and their 
spectral information must be identical. That's why the synthetic 
image should be degraded to the analysis of the original 
multispectral, and the all band histograms of the synthetic 
image must be matched with the histograms of the original 
multispectral image. 
For the spectral quality the following criteria are used: 
1. Standard deviation, mean, correlation coefficient 
(Wald et.al., 1997). 
The NDVI index (Tsakiri, 2001) 
D 
 
	        
Waiting...

Note to user

Dear user,

In response to current developments in the web technology used by the Goobi viewer, the software no longer supports your browser.

Please use one of the following browsers to display this page correctly.

Thank you.