where mavPumitiq-
The maximum similarity score p is 1, which means the two
feature descriptors are exactly the same. The minimum
similarity score is 0 which means the two feature descriptors are
orthogonal to each other; in other words, they don't have any
relation. PDF matching is implemented based on mean-shift
searching strategy. Finally, affine transformation parameters are
estimated based on the PDF-matched tie points. Note that
RANSAC is used to remove the blunders. Figure 8 illustrates
the co-registration results after RANSAC blunder detection; the
RANSAC threshold value is set to 0.5-pixel.
Figure 8. Co-registration result
3.3 Extracting Smooth Bridge Boundaries in Aerial Image
Hough linear transform is applied to the bridge ROI in the aerial
image to extract the bridge boundaries. For each Hough
transform identified linear feature, its Hough transform angle is
also recorded, which can be used to determine the bridge
direction and remove the non-bridge linear features. For a long
curved bridge, Hough circle transform was attempted to extract
the curved boundaries; nevertheless, the performance was not
stable. Alternatively, short linear features are extracted along
the curved bridge boundaries. Since Hough linear transform
cannot be directly used to extract long curved bridge
boundaries, the long curved bridge ROI is divided into several
small sub-ROIs, as shown in Figure 9.
(a) (b)
Figure 9. Sub-ROIs of a curved bridge ROI (a) and
short linear features in sub-ROI 4 (b)
32
Then, it is possible to obtain short linear features in each sub-
ROI. Hough linear features in all sub-ROIs are merged together
to form the complete Hough transform linear features along the
long curved bridge boundaries. The endpoints of linear features
are used to generate the smooth bridge boundary, see red points
in Figure 10.
It is also necessary to determine points of upper and lower
boundaries for the smooth boundary generation. In order to
simply separate the upper and lower boundary, all linear
features are rotated to align to the horizontal direction based on
the recorded Hough transform angles. This step is performed in
each sub-ROI for the curved bridge. If the bridge is rotated to
horizontal direction, upper and lower boundaries can be
separated based on comparing the Y coordinate. For straight
bridge boundary, 1* order polynomial function is used to fitting
those boundary points; for curved bridge boundary, 2" order
polynomial function is used. Once the polynomial function
parameters are estimated, the smooth boundary can be then
represented in the dense sample points computed via the
polynomial function, see blue points in Figure 10.
Se
(b.
Figure 10. Smooth boundary points computed via 2"* order
polynomial function (blue) according to the Hough linear
feature endpoints (red)
3.4 Precise DBM Generation
If the affine transformation between LiDAR intensity and aerial
image is established, smooth boundaries can be transformed
from the aerial image to the LiDAR intensity image as well as
to the LiDAR elevation data. The upper and lower boundaries
are shifted to best fit the upper and lower coarse boundary from
the coarse DBM. Figure 11 shows the smooth boundaries,
fitting the coarse boundaries. The void area between the smooth
boundary (pink) and the coarse boundary (blue) extracted from
LiDAR data should be filled in to form a precise DBM. In
addition, the elevation values of the smooth boundary points are
computed based on interpolating its neighbour points’ elevation
values. The precise DBM can be merged with the DTM derived
from LiDAR data to form a precise DSM.
7-8
7.589.
7:58!
7.588:
7.581
7.587!
Fi
P
A co
data |
and F