Full text: Close-range imaging, long-range vision

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3-0016, Japan - 
4259, Nagatsuta-cho, 
Surface Model 
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ensures unique solution by 
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the assumption of smooth 
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, ANM evaluates matching 
pagates its influence to the 
| Coincidence Enhancement 
| rule for the explanation of 
in extension of Hebb's rule 
(Kosugi, 1993). This principle can realize by competition and 
consensus process and its iterative feedback process for 
activation and stability of bond strength between neurons. In 
stereo matching problems, this approach is used for finding the 
correspondence between sub-areas in stereo images. Figure 1 
illustrates the main concepts of ANM approach. 
2.2.1 Competition Process: Let the position of local sub- 
areas in a pair of stereo images be xj; and y; respectively, where 
suffix i and j are grid number of sub-area in images, and feature 
value in each area be f(x), g(y) respectively, and the iteration 
number of process be k. Then we can express the difference 
evaluation function as follows. 
Fa -|res «aec D 
ld; ,9 2 (Ax*, Ay), Ax*, Ay »0 (2) 
  
      
where dj; is the mapping or shift vector between two images, 0 
is a quantity which regulates the search area size, Ax and Ay are 
positive constant. 
For feature values, we can use the brightness of a pixel, or a 
vector sum of multiple criterions. Also image similarity 
function such as cross correlation function might be used 
instead of difference equation. 
In competitive process, each sub-area independently searches 
for the optimal mapping position where dj gives the minimum 
error e; with Equation (3) according to the output of evaluation 
function (1) in the condition of Equation (2), thus forming 
competitive shift vectors. 
e; - min(F(x;)) (3) 
2.2.2 Consensus Process: The competition process 
maximizes connection strength between shift vectors. On the 
other hand, consensus process maximizes information of lateral 
correlation, which takes into account of neighbouring matching 
status, and thus is also restraining process against the 
competition operation. 
For effective applications of such a mechanism, we need 
mapping models preferable to the object model under 
consideration. For example, for a model emphasizing surface 
smoothness, the continuity of shift vector needs to be 
maintained. In this case, modification of mapping can make use 
of median value which is obtained from all shift vectors in the 
consensus area as expressed in Equation (4). 
A 4 
d; - median(a* | IR) (9 
where median() is the function which returns median value, R is 
an arbitrarily shaped consensus area around the target shift 
vector. 
If emphasis on bond weight of shift vector is necessary, bond 
strength r; can be defined as Equation (5). 
s uon 
^j EP (5) 
  
A target shift vector is updated with consideration of weight Wj 
which is calculated from its bond strength with che 
neighbouring shift vectors in the consensus area. 
Ww. = 
ij S EC (6) 
R 
dj'-»w,.d; (7) 
  
For controlling the propagation of weights, also Gaussian type 
functions can be used. 
2.2.3 Feedback Process: Both of competition and consensus 
process are repeatedly performed at local sub-area in parallel to 
realize modification of mapping. 
While the feature value in both processes is a very significant 
factor, there are also other decisive factors. For example, sub- 
area shape and size for evaluation function or search area size 
have strong influence over mapping in competition process. 
Similarly in consensus operation, shape and size of consensus 
area or criterion for consensus affects the convergence 
characteristics or mapping ability of the whole process. 
Therefore these parameters need to be modified in accordance 
to iteration stages. For example, the size of consensus area S, is 
narrowed down with Equation (8) according to iteration number. 
k 
S, 2 S, exp(-25, —) (8) 
where S, is the initial area size and k,,, is the maximum 
iteration number. 
After a series of competition and consensus process, initial 
positions of shift vectors and parameters described above are 
updated and feedback process is continued till iteration reaches 
the predefined number or shifts of vectors are less than a preset 
threshold. 
Output Layer 
     
Search 
   
    
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Competition 
Process 
Correlation Unit 
Unit Element 
A/ (Image Pixel) 
Output Layer oO[OBOOlOO OO O 
Input Layer oogoooo OOo 
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Mapping Layer 
TER, 5 A 
EN fancy [9] 
Figure 1. A principle of ANM 
    
   
     
         
        
   
   
    
  
Input Layer 
      
  
   
      
Correlation 
nit 
   
  
   
Addition 
Element ^9 
        
Consensus Area 
  
  
2.3 Problems in ANM 
Thanks to the consensus process, the continuity of stereo 
matching results by typical ANM are enhanced, which also 
means satisfactory processing result can be obtained when 
ANM is applied to natural terrain area where parallax shifts are 
smooth. On the other hand, it becomes difficult when applied to 
urban area where there are abrupt changes in parallax shifts, 
because building's edges tend to weaken by consensus process. 
To deal with this problem, we introduce a CE process with edge 
constraint or multi-clustering model approach for mapping 
region. 
2.4 ANM with Rectified Images 
In this study, image rectification is carried out for reducing 
calculation time and increasing the stability of ANM process 
with epipolar geometry, which reduces the direction of mapping 
to x-direction only. 
Photographic coordinate uv is 2-dimensional, with the origin at 
the camera's principal points of a stereo model (Figure 2). 
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