International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences,
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DSM accuracy [m] (1c)
HRS/HRG HRS
Region Growing Image
Matching (10m grid)
5.2
HRS/HRG
ISAE (45m grid)
mountainous
moderate/flat
HRS
Terrain Type
Figure 9: Summarized standard deviations of height differences between the produced DSMs and reference DTM
Figure 9 gives a summary of the obtained standard deviations
of the height differences between the produced DSMs and
the reference DTM. As can be seen, they depend on the
terrain type, on the number of employed viewing directions
(cameras) and on the used method, which leads to the
following 3 simple statements: 1. The DSM accuracy in
mountainous terrain is lower than in moderate and flat
terrain, which is obvious due to the higher probability of
occlusions and due to the higher impact of horizontal errors.
In addition, homogenous image patterns, e.g. in forest areas,
which also obstruct the matching process, produce gaps in
the point cloud and later in the DSM. Here is the biggest
potential of accuracy improvement by manual interaction. 2.
Three viewing directions (HRS/HRG) are better than two
(HRS only). Although the nadir viewing camera HRG does
not geometrically contribute to a better height accuracy, its
presence, however, supports the accuracy and reliability of
the matching process, especially in mountainous regions,
where it also helps to bridge occlusions. Nevertheless, HRG
imagery, if available at all, does not cover the whole HRS
scene and therefore it is not always possible to use a three
viewing (HRS/HRG) approach. 3. The DSM generated with
region growing image matching are more accurate than the
ISAE-DSM, which probably is at least partly due to the
different grid spacing. The actual reasons have not been
analysed in this study.
The study demonstrates, that DSM production using SPOT-5
data is possible with an absolute accuracy of better than 5 m
(lo). In mountainous areas the accuracy is worse due to
occlusions obstructing the automated mass point generation
process, especially if no nadir viewing HRG imagery is
available. The presented results still include all errors of the
automatic matching process and also the difference between
the produced surface model and reference terrain model.
Therefore it is expected, that the accuracy values still can be
considerably improved by manual editing and appropriate
filtering, filling the gaps in the automatically generated point
cloud and excluding blunders and points on top of vegetation
or artificial objects.
ACKNOWLEDGEMENT
We would like to express our gratitude to Assumpció
Térmens, who implemented the functional model into our
bundle adjustment program and to Cristina Ruiz, who
measured the control points. Our sincere thanks also go to the
Institute of Photogrammetry and Geoinformation at the
University of Hanover (Prof. C. Heipke) for leaving us the
region growing matching software and to Rupert Miiller of
the Remote sensing Technology Institute of the German
Aerospace Center DLR, who provided us with a software
tool to read the SPOTS ancillary data.
REFERENCES
Alamüs R., Kresse W., Langner M., 2000: "Accuracy
potential of point measurements in MOMS-images using a
rigorous model and a rational function". International
Archives of Photogrammetry and Remote Sensing, Vol. 33,
B4, pp. 515-517, Amsterdam, The Netherlands.
Colomina, I, Navarro, J., Térmens, A.,1992: “GeoTeX: a
general point determination system”, International
Archives of Photogrammetry and Remote Sensing, Vol. 29,
Comm. III, pp. 656--664, Washington D.C, USA.
Ebner H., Kornus W., Ohlhof T., 1992: „A simulation study
on point determination for the MOMS-02/D2 space project
using an extended functional model", International
Archives of Photogrammetry and Remote Sensing, Vol. 29,
B4, pp. 458-464, Washington D.C, USA.
Fratter C., Moulin M., Ruiz H., Charvet P., Zobler D.,
2001:“The SPOT-5 Mission”, 52" International
Astronautical Congress, Toulouse, France.
Heipke c Kornus W., 1991: “Nonsemantic
photogrammetric processing of digital imagery — the
example of SPOT stereo scenes” in: Ebner, Fritsch, Heipke
(Eds.): Digital Photogrammetric Systems, ISBN 3-87907-
234-5, Wichmann Verlag Karlsruhe, Germany, pp. 86-102.
Krzystek P., 1991: “Fully Automatic Measurement of Digital
Elevation Models”, Proceedings of the 43th
Photogrammetric Week, Stuttgart, pp. 203-214.
Otto G., Chau T., 1989: “Region growing algorithm for
matching of terrain images”, Image and vision computing
(7) 2, pp. 83-94.
SPOT Image, 2002: “SPOT Satellite Geometry Handbook, S-
NT-73 12-SI, Edition 1, Revision 0", 15. 01. 2002
SPOT Magazine No. 31, 2000: “The secrets of SPOT-5
Supermode”, Sept. 2000.
Vol XXXV, Part Bl. Istanbul 2004
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