The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
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(see figure 2) when there is an overshoot (case 1 in figure 2). If
there is an undershoot, the values are defined as the value at
+1.25 pixel from the edge center. As before, H is defined as the
geometric mean of the overshoot in x and y directions.
Figure 1. Calculation of H (Leachtenaucer et al., 1997)
In order to calculate NIIRS through image analysis (Image-
based NIIRS, INIIRS hereafter), we first selected points
manually where intensities were changing rapidly. Edge
profiles around the edge points provided were calculated.
Figure 1 shows the example of edge points provided manually
for edge response generation.
Figure 3. Example of edge points used for edge profile
generation
For one image, around 20 edge points were provided and for
each point, an edge profile was created. All edge profiles within
one image were averaged out to create nominal edge responses
for the image. Nominal edge responses were used to calculate
RER and H values.
It was difficult to have actual accurate values for G since this
value was not provided within the metadata, For IKONOS we
used the value published in the literature (Ryan et al., 2003) and
for Quickbird we assumed the value for IKONOS. For SNR we
assumed a constant value of 10. Although there are ways of
analysing SNR from the image, this method was not hired in
our experiments.
Table 3 shows the NIIRS estimated through image analysis as
explained so far.
Image Type
RER
H
G
GSD
INIIRS
Quickbird 1
0.2135
0.7783
4.16
0.6994
3.16
Quickbird 2
0.2043
0.7735
4.16
0.6797
3.15
Quickbird 3
0.2711
0.7832
4.16
0.7509
3.34
Quickbird 4
0.2515
0.7668
4.16
0.7661
3.23
IKONOS1
0.2444
0.7939
4.16
0.9295
3.01
IKONOS 2
0.2233
0.7765
4.16
0.9099
2.92
Table 3. Estimation of Image-based NIIRS (INIIRS)
Table 4 summarizes the three types of NIIRS: the NIIRS
provided within image metadata (PNIIRS), the NIIRS estimated
by human operator (TNIIRS) and the NIIRS estimated through
image analysis (INIIRS).
Image Type
PNIIRS
TNIIRS
INIIRS
Quickbird 1
4.3
3.71
3.16
Quickbird 2
4.4
3.75
3.15
Quickbird 3
4.5
3.93
3.34
Quickbird 4
4.5
3.75
3.23
IKONOS1
(4.5)
3.53
3.01
IKONOS 2
(4.5)
3.52
2.92
Table 4. Comparison of PNIIRS, TNIIRS and INIIRS
We can observe that INIIRS values were significantly lower
then PNIIRS and TNIIRS values. There can be many reasons
for this error. The G and SNR values we used may not be very
precise. (In fact SNR value of 10 was too small.) If we use
larger SNR value and smaller G, INIIRS value will increase. At
optimum situation, infinite SNR number can increase NIIRS
value by 0.344.
Also table 4 indicates that RER and H values we estimated may
contain errors. There may be some errors in taking averages of
edge responses and calculating nominal edge responses. This
effect is currently under investigation. On the other hand, we
estimated the edge responses (and RER and H) from natural
targets. In this case, edge responses may not be in a perfect
shape compared to the case tarps, for example, were used. RER
values in ideal case should be larger than the ones estimated
here.
Figure 4 plots the three NIIRS values for the six images used
for experiments. The figure shows very interesting results. As
mentioned earlier, TNIIRS values were lower than PNIIRS
values and there is no correlation between PNIIRS and TNIIRS
(“NIIRS Inspection” in the figure). However INIIRS values
(“NIIRS by hand” in the figure) showed strong correlation with
TNIIRS. Although there were shifts between TNIIRS and
INIIRS, the amounts of the shifts were almost constant. This