Full text: XVIIIth Congress (Part B3)

   
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 Overlapping images at 
the scale differences are 
scales, in which case the 
ying principles of scale 
xamining the behavior of 
(corresponding to low- 
icluded. When matching 
stablish correspondences 
ail or perform poorly in 
s are also of radiometric 
ong conjugate features, 
sely matching conjugate 
through scale space, and 
occurrence is dependent 
ect shape combinations. 
pected to receive much 
re, as it is inherently 
imagery (e.g. MOMS) 
available [Schneider & 
loves towards the fusion 
ery for geoinformation 
he integration of digital 
tion systems [Agouris et 
ry of various scales is 
f complex digital image 
oblems occurring when 
ures whose images differ 
employs scale space 
accommodation of scale 
THEORY 
is encoded in its values 
ons occur over a wide 
enna 1996 
  
range of spatial extents, with macro-variations expressing 
major signal trends, and micro-variations expressing highly 
localized trends, manifesting themselves within spatially 
limited areas. The visual perception and distinction of 
macro- and micro-variations in images is an intricate human 
cognitive process, involving perception, reasoning and 
often intuition. As such, this task is fundamentally complex 
to be algorithmically duplicated and functionally mimicked 
by machine-supported operations. 
The concept of examining the behavior of signals in 
multiple scales can be traced back to the seventies with 
research in hierarchical information structures  [e.g. 
Tanimoto & Pavlidis, 1975]. However, scale space theory 
has been formally introduced and developed in the signal 
processing community only during the previous decade, with 
the papers of Witkin credited as introducing the concept 
[Witkin, 1983; Witkin 1986]. It deals with the 
identification and classification of trends encoded in the 
values of signals by analyzing the behavior of those signals 
in various resolutions. The scale space of an m-dimensional 
signal defined in the space spanned by (Xp X5 > Xp )iS the 
(m+1)-dimensional space (x, X5... s)if and only if the 
Xn 
additional parameter s expresses the resolution of the signal. 
Digital images are two-dimensional discrete intensity 
functions defined in the (x,y) space, and therefore their scale 
space is the three-dimensional (x,y,s) space. A discrete 
representation of the continuous in s scale space of a signal 
f(x,y), comprising a set of 27 derivative signals 
(f G,y,s,)) representing the original one in various 
resolutions (termed scale levels), corresponding to n distinct 
values (59,5;,...5, .,) of the scale parameter s, is an n-order 
scale space family of the original signal. Figure ] shows a 
scale space family and demonstrates how the original signal 
is decomposed at coarser scale levels. 
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Fig. 1: A scale space family of a signal. The original 
signal is at the bottom and resolution decreases upwards. 
For different scale parameter values, different scale space 
families of an original signal can be generated. This 
generation is performed through the numerical manipulation 
of the original signal. The aim of generating scale space 
families of signals is to provide representations in which 
the information content of a signal changes in a systematic 
and therefore exploitable manner. In order for this goal to be 
met, scale space generation has to follow certain rules 
[Lindeberg, 1990; Lindeberg 1994]: 
e The scale space is generated through the convolution of 
the original signal with a single scale-generating 
function (or its discrete kernel) k(x,y, s) 
FG ys.) 8 KG ys) * f(x, y) Eq. 1 
e The scale generating function has to be selected in such 
manner that, through its application, signal resolution 
will change monotonically for respective changes of 
the scale parameter s. 
Both rules aim at the optimization of the interpetation 
potential of the generated scale space: the use of more than 
one scale-generating function (e.g. different functions for 
different scale parameter ranges) would make practically 
impossible the comparison of different scale space versions 
of a signal. The non-monotonic change of resolution would 
have similar implications. 
Scale generating functions have to possess certain 
properties, in order to satisfy the above rules [Burt, 1981; 
Babaud et al., 1986; Meer et al., 1987], among which the 
most important are: 
e symmetry, in order for direction independance to be 
satisfied, 
e normalization, for ensuring the (essential in terms of 
data handling and processing) compatibility in value 
range of the multiresolution versions of a signal, 
e  unimodality, to avoid semantic distortions due to the 
disproportionate participation of distant information 
during scale space generation, and 
e separability, for the alleviation of the computational 
requirements associated with scale space generation and 
manipulation. 
Considering two-dimensionality, as is the case for digital 
imagery, the separability property of a scale generating 
kernel k(x,y) allows its decomposition into two one- 
dimensional signals 
k(x,y) = [ky (01 ky (9) Eq. 2 
and thus permits the use of different scale values in x and y, 
effectively allowing us to consider the scale space of images 
as a four-dimensional one. Actually, even for m-dimensional 
signals we could, in the same manner, consider the scale 
space as a 2m-dimensional space. Scale space generation 
applied on digital imagery leads to the generation of digital 
image pyramids [Burt, 1984; Meer et al., 1987]. 
Arguably, the most important operation associated with 
scale space is to link the information of all scale space 
members together. This is achieved through feature tracing, 
which can be defined as the problem of identifying global 
features out of local signal properties, and of tracing the 
position and behavior of these features through various 
levels of the signal’s scale space. Features are typically 
identified at the coarser signal levels, where overlaying high 
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996 
   
  
   
    
     
   
    
     
   
     
    
   
   
   
     
   
    
     
      
   
  
   
   
   
	        
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