The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Voi. XXXVII. Part Bl. Beijing 2008
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3.2 Mausanne-les-Alpilles
Two stereo scenes are available for this area with an overlap of
nearly half a scene. Thus, there was a chance for separate and
common evaluations. GCP from a GPS campaign were
provided by the principal investigator from the Joint Research
Centre of the European Commission (JRC, Institute for the
Protection and Security of the Citizen, Agriculture and
Fisheries Unit) for stereo pair Ml. Via several matching steps 9
of these GCP could be transferred to stereo pair M2 (in the
overlap region). The RPC correction summary is given in table
3, the summary of the separate DSM processing in table 5.
Figure 3: DSM in overlap area of stereo pairs Ml/2 (grid
spacing 10 m, size of area 17.9 km x 23.5 km)
The orthoimage check matching was made for the stereo pair
Ml. The about 23400 shift vectors have a mean of (0.11, 0.21)
and a standard deviation of (0.18, 0.32) for rows and columns,
respectively.
Special processing of the overlap area of M1/M2:
In order to derive 4-ray tie points the matching for the overlap
area was done through the following steps:
1. hierarchical matching of overlap regions of the aft
images (MIA and M2A)
2. region growing for densification
3. transfer of matched points to the corresponding fore
images (MIA to M1F and M2 A to M2F) by a special
transfer point matching feature of the region growing
software
The numbers of points accepted in multi-ray forward
intersection is given in table 6 together with the number
achieved when merging the object space points found in the
separate processing of the stereo pairs Ml and M2 (last row of
table 6). The latter number is much larger than the number of 4-
ray points. This can be attributed to difficulties of multi
temporal and multi-direction matching. Also the cloud region
available in the overlap area is of course fully missing in the 4-
ray tie point set which is a further disadvantage. The standard
deviations of the height differences are comparable.
Matching
partners
Ray
s
Nr. of
accepted
tie points
(million)
Height difference:
reference DSM minus
Cartosat-DSM (m)
mean | o
from forward intersection
M1A/M2A
2
4.60
-2.1
5.51
M1A/M2A
/M1F
3
2.13
-1.4
3.64
M1A/M2A
/M1F/M2F
4
1.22
-1.3
3.36
DSM/DSM shift estimation
M1A/F
M2A/F
2
2.16
2.23
-0.77
3.2
Table 6: Matching experiment in the overlap region of the 2
Mausanne stereo pairs
Thus, the pure merging of the separate matching and forward
intersection results is more promising for practical purposes.
The lateral shift vector of this 4.39 million point set versus the
reference DSM is (3.2 m, -3.1 m). Figure 3 shows the DSM
derived by merging of the point sets for the overlap area.
3.3 Bavaria
A laser DTM of the Bavarian Survey for the Taching area is
available (5 km x 5 km, 5 m grid spacing). For GCP extraction
an orthoimage of 2 m GSD could be retrieved from the Geoweb
server of the Bavarian Survey (figure 5). 14 GCP are extracted
from orthoimage and Bav-A and complemented to stereo tie
points via LSM (as described for Catalonia). Evaluations
reported here are restricted to this small Taching subset of the
Bavarian stereo pair (see table 3 for RPC correction results).
The results in table 5 show a large standard deviation of the
height differences to the reference DTM. In order to prove the
influence of the forest parts the laser DTM was subtracted from
the (smoothed) Cartosat-DSM. In the difference image all
pixels with values larger than 10 m are marked black. The result
is shown in figure 4. A good correspondence of the black areas
with the forest areas in figure 5 (orthoimage of Bavarian Survey)
exists. This explains the high standard deviations in table 5.
4. CONCLUSIONS
Comparisons of the generated DSM with the JRC and ICC
reference DSM/DTM result in standard deviations of the height
differences of 3-4 meters after affine correction of RPC (for full
scenes / case Bavaria excluded). This should be ranked as a
very good result because no object classification in terms of
DSM/DTM differences is applied. Thus, CARTOSAT-1 stereo
imagery is well suited for the derivation of DSM and
orthoimages with 1-2 pixel vertical accuracy (1 a) in terrain
with good pattern matching characteristics and moderate slope
angles. Prerequisite to achieve this accuracy is a set of well
distributed GCP of high accuracy for RPC correction (about
half pixel standard deviation at GCP). In mountainous terrain