bsolute
ng (left)
‘absolute
umber of
grid points used for DEM matching and based on that, we
further examined the feasibility of automatic DEM matching
using a large quantity of grid points extracted automatically
over the whole area. Table 2 shows the accuracy of absolute
models from DEM matching with different number of grid
points. The accuracy was assessed using true GCPs, 18 points
as shown in table 1.
Firstly, the different number of selected grid points were
tested by removing outliers though visual checking and it is
observed that more reliable visually checked grid points lead to
more accurate DEM matching results. Continuously, the
potential of automated extraction of grid points was tested for
DEM matching. We extracted automatically about 6,000 points
at a regular grid interval. The accuracy of the absolute models
from DEM matching with the automatic gird points was shown
in table 2. Slight accuracy degradation was observed. Since
there are limitations on manual acquisition and visual checking
of many grid points for DEM matching, grid points generated
from automatic process are preferred. Moreover, automatic grid
points selection is a meaningful process in that it leads to
automatic mapping of satellite image without ground control
points.
Considering several DEM matching error sources such as
resolution difference between two DEMS, respective errors on
each DEM, in particular the reference DEM, we could expect
that fully automated grid points including outliers may lead to
accuracy degradation of DEM matching. Nevertheless, it is
observed that DEM matching still stably worked to SPOT-5.
Through automatic DEM matching, we generated a DEM at
grid spacing of 10m based on absolute orientation using
automatic grid selection. The DEM is shown in figure 3. We
carried out accuracy assessment further by comparing the
reference dataset. The DEM extracted from digital map on a
scale of 1:5,000 were employed as reference data and it is
shown in figure 4.
Figure 3. SPOT-5 DEM from automatic DEM Matching
Figure 4. The reference digital map and extracted DEM
We compared about 3,000 points of the resultant DEM with
corresponding points of the DEM extracted from the digital
map. Height differences between the two DEMs were calculated
by Mean Absolute Errorr«:MAE) and Root Mean Square
Error(RMSE). Our DEM yielded MAE of approximately 7 m
and RMSE of approximately 12m. Overall, through the DEM
matching experiments, we confirmed the feasibility of reliable
DEM generation without ground control points.
4.2 Applicability of the Existing 90m Global Elevation Data
There exist several difficulties coming from differences of
resolution between the relative DEM and reference DEMs such
as the errors contained in the reference DEM when applying
DEM matching. Considering these factors, DEM matching
looks more challenging when using much lower resolution
elevation dataset. For testing this feasibility, we here extended
our DEM matching technique by using the existing 90m global
elevation data. If it is proved that the global DEMs can be
sufficiently used for DEM matching, our proposed method can
be used as an efficient solution to absolute orientation of high
resolution satellite image without ground control points.
Using SRTM-derived DEMs(DTEDs) with gird spacing of
90m, we performed DEM matching with automated grid points
selection and check the accuracy of absolute models. Table 3
shows the accuracy with 90m elevation data and the previous
30m elevation data. We could achieve the accuracy of about 3
pixel on the image space and of about 9m in horizontal and 2m
in vertical direction on the object space. Although the issue
whether this is sufficient remains, the result reflects that our
DEM matching worked well for the existing elevation data at
90m spacing. This is very encouraging in terms of attaining
wide applicability with the existing 90m resolution elevation
data available worldwide.
5. SUMMARY AND CONCLUSION
In this paper, we exploited the DEM Matching technique
further using existing global elevation dataset for absolute
orientation of high resolution satellite image without ground
Table 3. Automatic DEM matching results using 90m existing global elevation data
Left model errors (pixel)
Right model errors (pixel) Object space errors (m)
Col Row All Col Row All Horizontal Vertical
30m existing elevation data 0.62 2.12 2.21 1.41 1.66 2.18 5.30 3.98
90m existing elevation data 2.60 2.44 3.57 2.36 2.10 3.16 9.03 1.99