International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004 Intern
6-Estimation of the transformation parameters
The whole procedure of automatic interior orientation (AIO) is 3.5 Pc
shown in Fig.1.
Durin;
extrac
patch
matrix
Resampling the Template negati
negati
grey v
* Figure 3: Desired mask
Localization 3.6 Es
3.3 Image pyramid derivation Now |
1 E the po
Precise measurement On different pyramid levels we use different representations for sou
the fiducials. On highest levels we use the whole fiducial mark fau
including its surrounding(Fig.4 left) On the lower levels the Rrojec
1 fiducial figure (Fig.4 middle), and only on the lowest level Aca
Transformation parameters where final measurement is done, the fiducial mark itself is be ki
used (Fig. 4 right).
Xe =
Figure 1: The whole procedure of AIO
3.1 Extracting image patches J
To do the job, one doesn't need to use the whole image so we
just extract the patch including fiducial mark and its
surrounding (Fig.2). This helps us to reduce the amount of where:
information and to rise the speed of computation. The size of [a, b.
patch is dynamically changing in correlation to the image size.
Ir»
Figure 4. Left: Pattern of fiducial mark and its surrounding. m
Middle: Pattern of the fiducial mark figure. Right: Pattern of the
fiducial mark.
34D ; : i : 3.7Lo
3.4 Detection of the orientation of the image
Hh : RUM ; = ; : From |
There are eight different possible orientations how to scan an
image, i.e. wrong reading or right reading with four different SE
multiple 90° rotations respectively. In general, fiducials are
normally located on the corners and/or edges of a film as shown 3.71€
in Fig. 5. To detect the correct orientation, we analyze the order In this
of fiducial mark's numbers. pixels
fiducia
pyrami
6 2 5 templa
the sea
Figure 2: Extracted image patch neve
which
of (r) i:
3.2 Resampling the template ] 3
How to resample the template affects the success and accuracy
of LSM (Least Square Matching) and output data as more we
improve the quality of template more accurate output data and
LSM algorithm will be. Here, since we knew the kind of camera 7 4 8
so we resampled the template from the extracted patches and
improved its quality by several pre-processing steps to be used
by LSM algorithm (Fig.3).
Figure 5. Fiducial distribution on an aerial photo and the
numbering sequence by USGS of the USA.
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