Full text: Proceedings, XXth congress (Part 4)

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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 
  
Where g is the degrade image, g; is image on focal panel, g; is 
the i bit panel image, & denotes the ‘and’ operation. 
Once /(x,y) is determined, the image restoration can be easily 
done to r(x,v) in wavelet domain. There are many restoration 
algorithms in wavelet domain (M.R. Banham, 1996, M. Belge. 
2000, Y. Wang, 1999, M. Crouse, 1998, R. Chan, 2003). 
with geometric correction before mosaic. Thus, the mosaic slot 
is missed after this processing. We can see obviously in the 1:1 
zoom windows as figure 11(c) and figure 11(d) that the mosaic 
slot of buildings can be effective removed. Figure 12 shows 
result of a mosaic project with 8 IKNOS images. 
  
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Figure 9 Restoration Based On RW Model 
Considering the blur edge degradation, an edge preservation 
filtering to wavelet coefficients with the edge detection is 
proposed in this paper to do image restoration in RW domain. 
Figure 9 gives the total processing flow. 
Sobel operator is used for edge detection to the wavelet 
coefficients to make edge clear and non-edge coefficients are 
taken as noise and removed. Furthermore, the regularized 
image restoration based on common imaging model as figure 1 
shown can be taken to i(x,v) if large sensor movement exist 
during imaging. Figure 11 gives the restoration result based on 
RW model to SPOT image. 
The focal panel image is composite of 3, 4, 6, 7 and 8 bits while 
the non-focus image is composite of 1, 2 and 5 bit. Bit 1 and bit 
2 images are almost noise, while the bit 5 image is the contour 
image. As figure 10 (a) and (b) shown, the blur edge becomes 
clearer. Table 1 gives the quality assessment result of Wiener 
Restoration, Inverse Filtering and RW based restoration 
proposed in this paper. 
Table | Image Restoration Comparison 
  
  
  
Wiener Inverse | RW Based 
Restoration | Filtering | Restoration 
Mean Square Gradient 5.148 5.800 9.214 
Definition 0.21 0.24 0.45 
  
  
  
  
  
As table | shown, the restoration result based on RW 
imaging model is superior to wiener restoration and 
wiener filtering based on the traditional imaging model as 
figure 1 shown. 
3. EXPERIMENTS AND RESULTS 
For photogrammetry and remote sensing, image mosaic is very 
important to produce orthodox image map. It is very common 
that the adjacent two images or adjacent two stripe image have 
different contrast and tone, which will make image mosaic fail 
with obvious mosaic strip as figure 12(a) shown and ‘colour 
cloth” phenomena to high resolution satellite image as figure 
13(a) shown. 
In order to remove the mosaic stripe. image dodging based on 
RW imaging model to the adjacent two images is done together 
965 
4. CONCLUSIONS AND DISCUSSIONS 
Retinex Wavelet imaging model based provides a 
reasonable image decomposition and representation, 
which is different to traditional imaging model. This 
model distinguish image with ill-problem part and non-ill part 
to avoid image quality improvement processing together 
damaging non-ill part and fully consider the characteristic of 
HSV. The image dodging enhancement to different kinds of 
image defects show that it can effectively deal with non-even 
light, contrast and tone problems. The image restoration based 
on RW model to blur edge is better than common restoration 
algorithms. The typical application of image mosaic shows the 
advantages of proposed RW imaging model in the field of 
image quality related applications. And also it can improve the 
image quality such as shadow defects to restore objects, which 
is very useful to image understanding processing such as object 
identification, image matching and image vision. Most 
important, the retinex wavelet based image representation 
model is a simulation of HSV and its sensitive course, which 
can be used for image quality assessment system. The authors 
think the quality assessment system based on RW imaging 
model can combine quantitative assessment and personal 
assessment standard and it will be a research direction. of 
uniting quality assessment system. Still some other problems 
and researches in this work to be done in the future are listed as 
following items: 
(1) More imaging processing algorithms based on rctinex 
wavelet model such as image fusion, image compression 
and image understanding. 
(2) Effective and accurate estimation of /(x.Y) 
Image quality assessment based on retinex wavelet 
model 
ACKNOWLEDGEMENT 
The author would like to thank Wuhan Supresoft Co., Ltd to 
provide some experiment data and to provide IKNOS test 
images and NASA Mars website www.marsrover.jpl.nasa.gov 
to provide Mars images. 
 
	        
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