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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
In the Section 2, the paper introduces the general concept of
the approach and some basic considerations in the approach.
This section also shows a Lidar Point Densification System
(LPDS) developed based on the approach. Then in the
Section 3, the paper presents the experimental data and
results and gives an analysis of the results. In the last section,
the paper discusses the feasibility of the approach, the
potential applications of the densified Lidar data, and gives
direction of future works at the end.
2. THE APPROACH
An approach has been developed at EarthData to generate 3D
points through image matching techniques to densify Lidar
points at where denser points are needed. The approach is
designed to densify only buildings for practical reasons
mentioned in the Introduction section. The concept of the
approach is described as follows. When denser building
points are needed for an existing Lidar data, the approach is
to firstly identify all the buildings by a semi-automated
building extraction process (Wang, 2000). Then, it generates
2D conjugate points through image matching with the help of
the building Lidar data. As explained above, the existing
Lidar data allows the searching of a conjugate point to be
done at an accurate searching location and with a minimum
search window, which therefore leads to a minimum image
matching time. After the image matching process, the
generated 2D conjugate points are converted to 3D points by
the space intersection process. Then, the generated 3D
building points and the existing Lidar points are merged to
make a denser coverage for the buildings. The 3D points can
be generated at any reasonably specified spacing. In order to
produce reasonable results, the approach has certain
assumptions on the input Lidar data and imagery: the input
Lidar data should have 2-3 meter or better point spacing and
have at least 20cm elevation accuracy. If the Lidar point
spacing is too coarse, it may not be able to provide an
accurate searching location for the conjugate points.
Additionally, the input imagery used in the image matching
process must have a ground pixel resolution that is equal or
better than the specified output point spacing for the
densified data, i.e., if 1 meter point spacing is wanted for the
output 3D points, then the ground pixel resolution of the
stereo images used in the matching process has to be 1 meter
or finer.
Based on the approach, the LPDS was developed. The
drawing in Figure 1 shows the processes and data flow of the
LPDS. The first process of LPDS is Building Extraction. The
algorithms for this process were developed several years ago.
The process is semi-automated; it mainly requires an
operator to delete those non-building features that are
detected as buildings. This process generates Lidar building
points. Each building has its own set of Lidar points. The
second process is the generation of conjugate points through
image matching. The image matching technique used in the
LPDS is Cross-Correlation. This process produces a mass of
2D conjugate points for each and every building. Then the
2D conjugate points are converted to 3D points in the third
process that is the space intersection. The output of the third
process is the 3D building points. The last process of the
LPDS is to merge the 3D building points with the existing
Lidar building points to form the densified Lidar points, or
also called in this paper the densified building points.
Lidar Data )
| Building Extraction |
| Lidar Building Points
Stereo Images
with Exterior and
Interior Orientations
Generation of Conjugate Points
Through Image Matching
2D Conjugate Points
Conversion of 2D Conjugate
Points to 3D Building Points by
Space Intersection
3D Building Points
Merge of 3D Building Points
and Lidar Building Points
Densified Building Points
Figure 1. The processes and data flow of the LPDS.
3. THE EXPERIMENTS AND RESULTS
3.1 The Experimental Data
Figure 2. The experimental area and buildings.
The experimental data was a Lidar data with 0.5 meter
spacing with an average 15 cm vertical accuracy. Then, this
original 0.5 meter spacing Lidar data was thinned to generate
a Lidar data set of 3 meter spacing and the generated Lidar
data set was used in the experiments. Having the original 0.5
meter spacing Lidar data available allows a quality check and
analysis on the densified building points. The imagery used
in the experiments had a range of ground pixel resolution
from 0.1 to 0.5 meter. The experimental area covered three
)