re the
rmine
pixel
S on
ive to
> filter
ontal,
ds of
holds
>nded
S are
ts are
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-point
given
ection
hip of
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(see
ediate
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| and
which
ghtest
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strong
For an exemplary detection of tie-point candidates, all
these preprocessing steps have been applied to the test
image. In a next step the geometrical ratio operator was
applied in order to detect edges in the four main
directions with a 5 x 5 filter kernel. The respective results
are shown Figure 3 (a-d). These images are further input
for the another ratio operator, which determines
likelihoods for the individual pixels to be corner points
along an edge. The result of the operator is shown in
Figure 3 (e), where the likelihood increases with the
darkness of the pixels.
Finally Figure 4 shows the tie-point detection result, which
has been generated for the selected image chip. The
detector allows the definition of a number of „best“ tie-
points to be found in the selected area. In the present
case the detection of 15 and 5 tie-points, respectively,
was envisaged (see Figure 3, left and right). A minimum
distance of 40 pixels between individual candidates was
further specified.
Figure 3: Results of GRO, applied in
horizontal (a), vertical (b) and diagonal
direction (c and d), and of ratio
edge/corner point detector (e).
317
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B2. Vienna 1996