registration model allows the affin transforms of the image
plane.
The Hough Transform (HT) is a well-known technique for
object detection in the parameter space. It uses the
parameter space (p,0) of the normal line equation Xcos(0
)+Ysin(0)=p. The set of parameters (p,0) of all possible
lines that intersect in some proper point (x,y) of the image
plane corresponds to a sinusoidal figure in the space (p,9).
This figure is called the spread function.
The idea of HT is to accumulate the votes of the pattern
points in the parameter space through the simple
summation of their spreads. If two points of the pattern
belong to some line (p;,0;) then their spreads intersect in
the point (p;,6;) in the Hough space (p,9). So, the value of
the resultant accumulator function A(p,0) in the each point
(pj.0;) is equal to the number of points of the pattern that
lie on this line (p;,0;). Thus, if the pattern contains m
straight patterns, it will be m local maxima in the Hough
space.
It is very efficient technique that provides the invariant
detection of the straight patterns without any comparison
with samples. The Hough Transform does not require any
sample ImM because it immediately accumulates the votes
for a model M. So, techniques that do not use the
comparison can work directly with generic models of
objects.
The Events-based image Analysis (EA) approach was
developed to generalize this important property of Hough
transform for a common case of object detection. The
essence of FA is the following.
Let we have some image Im, and it is required to
determine a posterior probability of some hypothesis H
about the scene observed. Then the Bayesian formula takes
the form:
P(H/Im)=[P(H)xP(Im/H)}/[P(H)xP(Im/H)+PH"))x
P(Im/H5)], (1)
where Hf means "not H".
Image Im is also considered (in the spirit of Probability
Theory) as an event, or, in other words, we consider the
event E(Im) that is connected with this image Im. This
event E(Im) consists of some different events occurred in
the process of low-level image analysis.
While the any essential fact derived from image analysis is
the event ey, the event E(Im) will be the intersection
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B3. Vienna 1996
E(Im)=ejneyn..nek, (2)
where K is the total number of such events. So, we need
only (1) and (2) to test any hypothesis H about the image
Im.
If one supposes that events {ep} are independent in general
then (1) and (2) supply
P(H)x [[UXe, / 8)
P(H / Im) = P(H)x I[t?(e / B) Par?) « [[t2(e, / 8*)'
.-«(3)
where I Tx 7X1 Xxox...XXk.
From this point of view the Hough Transform, Generalized
Hough Transform, Serra morphology, Pytiev's morphology
and many other popular techniques are the Bayesian EA-
procedures that differ in events analyzed, hypothesis tested
and probability models used.
The most important properties of EA procedures that are
principally improper for the comparison-based techniques
are the following:
e the usage of generic models;
e the usage of hierarchical models;
e the usage of non-homogeneous information.
The first one is provided through the accumulation of
evidences immediately for the model-based hypothesis.
The most important result here is that the assumption of
event's probability independence in general is enough to
provide the possibility of parallel independent
accumulation of events' evidences.
The usage of hierarchical models based on a hierarchical
application of Bayesian formula.
The usage of non-homogeneous information is clear
enough but usually connected with a coarsening of the
model of real situation. The non-homogeneous image data
means a set of data from different physical image sources
or/and from different image processors. Let we have N
channels of registration and L levels of data abstraction.
Level of data abstraction is a form of information
representation (image, contour preparation, dot pattern,
parameter space, feature vector, etc.). Let the complex
model of object is described as a set of propositions
M={ M}}, i=0..N; j=1..C, 1=0..L, that the object must
satisfy to. The notation M ; means that this proposition
takes place in i-th channel at 1-th level of abstraction if the
object of model M is observed.
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