The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
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success rate and less mismatches. These parameters include the
size of the correlation window, the search distance and the
correlation threshold values. This is done by analyzing the
matching results at the previous image pyramid level and using
them at the current level.
(4) High matching redundancy: With our matching approach,
highly redundant matching results, including points and edges
can be generated. Highly redundant matching results are suitable
for representing very steep and rough terrain and allow the
terrain microstructures and surface discontinuities to be well
preserved. Moreover, this high redundancy also allows for
automatic blunder detection.
(5) Efficient surface modeling: The object surface is modeled
by a triangular irregular network (TIN) generated by a
constrained Delauney triangulation of the matched points and
edges. A TIN is suitable for surface modeling because it
integrates all the original matching results, including points and
line features, without any interpolation. It is adapted to describe
complex terrain types that contain many surface microstructures
and discontinuities.
(6) Coarse-to-fine hierarchical strategy: The algorithm works
in a coarse-to-fine multi-resolution image pyramid structure, and
obtains intermediate DSMs at multiple resolutions. Matches on
low-resolution images serve as approximations to restrict the
search space and to adaptively compute the matching
parameters.
Svtp'Efattvdlma«* Hie Rtfcrtaee Stnp-1 K*kwdiaa*t
t'orvfwrd teNadir Ss»s*$t Baefcwwd
(a)
Fig. 3: GC 3 matching with 6 high-resolution airborne linear
array images (ca. 5cm footprint) from 2 strips with changing
flight directions for solving multiple solution problems. The
individual NCC functions and the SNCC function within the
search range determined by height increment of ±10.0 meters
is shown in (b)
3. Performance Evaluation
The height accuracy (or to be more precise the vertical accuracy)
of DSMs/DTMs usually results from the quantitative and
statistical evaluation of the DSMs/DTMs and it is determined by
its root-mean-square error (RMSE), the square root of the
average of the set of squared differences between height values
of the DSM/DTM being evaluated and height values from an
independent source with much higher accuracy. According to
(McGlone, 2004), there are at least 3 major sources of error
when DSMs/DTMs are generated by using the optical imaging
systems, i.e. the Photogrammetric Modeling Error (PME), the
Measurement Error (ME) and the Surface Modeling Error
(SME).
These errors can be estimated empirically or estimated using
error propagation. For instance, we could manually measure a
sample of randomly spaced points using the stereo model with
the same image orientation parameters and then compare them
with their interpolated heights from the generated DTM. In this
case, the height errors mainly come from ME, but also from
SME in cases of very rough terrain. However, if we measure
these points with a different method such as the traditional field
surveying, the estimated errors may include all the errors
mentioned above.
In order to evaluate the performance of our approach for
DSM/DTM generation it has been verified extensively with
several HRSI datasets, such as IRS-P5 and SPOT-5 HRS/HRG
images, over different terrain types, which include hilly and
rugged mountainous areas, rural, suburban and urban areas. In
the following, we will report in detail about 2 experiments. The
first involves the evaluation of SPOT-5 HRS/HRG triplet images
over a testfield in Zone of headstream of Three rivers, eastern
Tibet Plateau, China with accurate GCPs, more than 2500 m
height range and variable land cover. The accuracy study was
based on the comparison between as many as 160 accurate GPS
check points, more than 1400 manually measured check points
and the automatically extracted DTMs. In the second test, the
proposed approach has been also applied to 23 IRS-P5 stereo
pairs over Beijing city. Other processing and evaluation results
of IKONOS and SPOT5 HRS/HRG can be found in Zhang and
Gruen, 2004; Poli et al., 2004; Baltsavias et ah, 2006 and Poon
et ah, 2005.
3.1 Automatic DTM generation from SPOT-5 HRS/HRG
Images over Test-field in Zone of headstream of Three rivers,
Eastern Tibet Plateau, China
The test area in Zone of headstream of Three rivers, Eastern
Tibet Plateau, China covers 250 topographic maps at 1:50,000
scale with the area of about 12,000km 2 , where contains
large-area of seasonally and perennially frozen soil,
mountain/valley glacier and perennial snowfield and large area
of unman area. The test-field is the headstream of Yangtze River,
Yellow River and Lancangjiang River, and the QingZang
railway and national road cross the region from north-east to
south-west. The study area consists of steep arid/semi-arid
mountainous region in the northern part (transition zone between
Kunlun Mountain and Tsaidam Basin), smooth hilly regions in
the middle parts (plateau mountains and intermountain basins
are well-developed) and high-plateau mountain ranges in the
southern part (mountain/valley glacier, glacier canyon and
knife-edge crest are well developed). The average elevation is
4000m in test-field. Main geological structures are in trend of
nearly east-west direction (Fig. 4). The various landforms in
study area provides better environment for DTM automatic
generation.
Over the test area, totally 11 pairs of 10 x 5m SPOT-5 HRS and
nearly twenty 5m HRG images were acquired. These images
were used to generate DTM over the whole test area (Fig. 4). In
particular, for DTM accuracy analysis, 2 SPOT-5 HRS satellite
image pairs imaged in Nov 2003 and 6 HRG images, which can
form the SPOT-5 stereo triplets, have been selected. The images
have the fine quality and have no cloud coverage, which provide