The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part Bl. Beijing 2008
Adaptive ATE also works for satellite images with good
geometry (e.g, after triangulation with control points). Table 2
shows some results.
Sensor Type
Accuracy
Check #
RMSE (meter)
alos
565
11.87
cartosat
255
7.36
Eros
127
2.99
ikonos
147
3.8
quickbird
95
3.54
worldview
700
9.15
Table 2. ATE accuracy for satellite sensors
Fig. 9 shows an IKONOS image overlapped with extracted
points and contours. Since satellite images have much lower
resolution, point density from ATE is also very low, and the
performance of object filtering is not as good as on frame
images.
For frame images, adaptive ATE is slower than traditional ATE
and ranges from 2 times to 16 times depending on terrain type.
However, the quality from adaptive ATE is normally better in
terms of point density, distribution, and accuracy. Adaptive
ATE needs more computer time but less human time because it
reduces overhead and post-editing work.
Figure 9. IKONOS image overlapped with extracted points (red:
points on objects; blue: points on ground) and
contours, before (above) and after (below) object
filtering
The converge angles of some satellite stereo pairs are very
small, so space intersection from sensor model can be very
sensitive to small changes of parallax: at high pyramid levels,
image coordinates of correctly-matched points are not accurate
(at pyramid n, the uncertainty of a pixel is 2 n times bigger than
a pixel at pyramid 0 or original resolution) , so calculated z
values from space intersection may be far out of valid range and
be subject to elimination as blunders. It is possible to see that