Full text: Real-time imaging and dynamic analysis

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International Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 5. Hakodate 1998 
ADAPTIVE SUBPIXEL CORRELATION BASED ON PRELIMINARY SEGMENTATION 
S.Yu. ZHELTOV, Deputy Director 
A.V. SIBIRYAKOV, Researcher, 
State Research Institute of Aviation Systems, 
Moscow, Russia 
e-mail: zhl@fenix.niias.msk.su 
Commission V, Working Group 1 
KEY WORDS: Subpixel Cross-Correlation, Morphological Correlation, Subpixel Image Matching 
ABSTRACT 
This work deals with the subpixel point correspondence problem. Subpixel matching methods such as Least-Squares 
Correlation [2] or Adaptive Subpixel Cross-Correlation [1] use six-parameter geometric transformation and two- 
parameter radiometric transformation of the whole image patches to achieve subpixel matching accuracy. However 
different regions inside image patch may have different distortion parameters. The method developed in this paper uses 
the images preliminary segmented into regions. Each region possesses its own unknown distortion parameter set that 
can be found by solving the correlation coefficient maximization problem. Two different kinds of correlation: widely used 
normalized cross-correlation and morphological correlation are to be considered. In both cases the consecutive 
correlation application results in problem of a finding a vector of the amendments of the parameters as a generalized 
eigenvector problem. The theoretical decision of this problem in view of specific structure of matrices obtained by 
linearization is offered. 
1. INTRODUCTION 
Precise points matching on the images of a stereopair is 
one of central problems in the area of machine vision 
and digital photogrammetry. A lot of publications is 
devoted to investigations of this problem. Among well- 
known classical approaches the conventional normalized 
cross-correlation method occupies first place due to its 
fundamental importance and vast utilising in practice 
during several decades. However, revealing drawbacks of 
the method connected with non-adaptive geometric 
properties have brought the creating of new more 
powerful methods, for example, adaptive least squares 
correlation [2]. One of this article goals is to provide 
consequential extension of classical normal cross- 
correlation that it could gain subpixel accuracy and 
adaptive geometric properties. 
À subject of the given work is a situation, when the rough 
decision of a correspondence problem is already received 
and it is required to reach extreme possible accuracy of 
matching. It can be achieved by using information about 
preliminary image segmentation. 
2. ADAPTIVE SUBPIXEL CROSS-CORRELATION 
The adaptive subpixel cross-correlation method in a point 
correspondence problem was first described in [1]. The 
method uses normalized cross-correlation function as a 
similarity measure of two image patches. 
Let us denote f(x, y) - intensity distribution on left image 
patch (also called template). Futher for the simplicity 
195 
assume that the average intensity of the template is equal 
to zero: f=0. For this purpose we subtract template 
average intensity from each intensity value 
f(x,y) ^ foy) - f (1) 
Let place an origin of a rectangular coordinate system 
(x,y) in the middle of central pixel of the template. Denote 
g(x1,y1) - intensity distribution on the right image patch 
which corresponds to the template. The shape of this 
patch differs from the shape of the template for the 
reason of perspective distortions. An origin of coordinate 
system (x1,y1) will be placed in the center of the right 
image patch. Coordinate systems (x,y) and (x1,y1) are 
connected by an unknown transformation (2), where p - 
transformation parameters vector 
X, = X, (x, y,p) (2) 
Ji - y 05 y, p) 
It is necessary to find a vector of parameters p by 
maximizing of a normalized: cross-correlation of the 
patches 
2.10.80) © 
CY ^ YO sx y) = Ng?) 
(x.y) (x.y) 
  
k(p) = 
  
 
	        
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