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Figure 7. Intensity balancing using tie points: original i images
(left) and adjusted images (right)
34 DEM Interpolation and Orthophoto Generation
From the first panorama of each landing site, we extracted
interest points and calculated the statistics of the Martian terrain:
semivariogram. We found that a dual polynomial model, one
for close range (0~5m), another for far range (5-50m) fits well
with the semivariogram, as shown in Figure 8.
Figure 8. Dual polynomial model for Kriging: close range 0-5m
(left) and far range > 5m (right)
The distribution of 3-D interest points is unbalanced: it is dense
in the close range and sparse in the far range. Normally in the
very far range (> 25m) of Navcam, the Kriging model will no
longer work, so we used both Kriging (in the range < 25m) and
TIN (in the range > 25m) to interpolate the DEM.
Figure 9. DEM and orthophoto for MER-B Site 14 (Fram Crater)
4. ROVER LOCALIZATION
The photogrammetric solution to rover localization uses the
output of the rover’s s navigation sensors as an initial value and
improves its precision from ten to one percent (Li, 2002).
The key to improvement of precision is to find sufficient tie
Points between cross-site image pairs. Since different sites are
normally separated by over 50 meters (the length of a sol's
travel), usually only obvious landmarks like rocks can be
identified.
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where
, Vol XXXV, Part B4. Istanbul 2004
4.1 Landmark Extraction
Landmarks (most often rocks on Martain surface) can be
detected from occlusion. In ground level rover images, a rock
normally occludes a long region behind it, see Figure 11. The
elevation of these occlusions, however, can be interpolated
correctly via Delauney triangulation of interest points. Thus, by
projecting the DEM to the image plane and comparing the
calculated parallax with actual parallax, occlusion can be
detected, which reveals the size and shape of the front side of
the rock.
Figure 10. 3-D meshed-grid of the Fram Crater
Figure 11. Interest points; DEM; parallax difference; and
detected rock occlusion
Rocks can then be modelled as a half ellipsoid with an
uncertain backside, as seen in Figure
12 (right), the measurement uncertainty of the rock can be
modelled as an ellipse with parameters:
12 (left). As seen in Figure
2
a= s. dp 2
bf I] (2)
D = sA
a, b are the long / short half axis
dp is the parallax error, around 1/3 pixel
b is the baseline length
f is the camera focal length
A is the angular resolution of camera
Figure 12. Rock model (left) and its measurement uncertainty