Charles Toth
4.2 Sampling Pattern
The footprint of the laser beam and the ground pixel size of the EarthData LIDAR and digital camera system as
discussed above are very comparable and also both systems work with similar FOV’s. For our discussion, the typical
LIDAR data acquisition configuration described above will be considered. Fig. 3 depicts a surface patch showing the
LIDAR spots and the back-projected image (stereo pair) pixel tessellation. As illustrated, there are three independent
irregular sampling patterns. Of course, the irregularity depends primarily on surface undulations and to a lesser extent
on the sensor orientation. The ratio between the LIDAR and image samples is about 1:60. Since the LIDAR system may
receive multiple returns, the effective sampling size for this rare situation can be smaller as indicated on the lower-right
LIDAR footprint in Fig. 3 where the laser beam hits a break line. A completely missing LIDAR spot is another likely
anomaly; for example, due to surface slant or due to specific materials such as tar (which has no response in the narrow
LIDAR spectral band) it is possible that no laser return will be detected at all.
: Image 2 pixel tessellation
+
pun
() LIDAR footprint
Figure 3. Footprint distribution of the image ground pixels and LIDAR spots
To assess the impact of the different sampling rates of the LIDAR and imaging sensors with regard to the surface
extraction problem, two approaches can be considered. First, if the sampling rate of the LIDAR system (typically
defined by the cross track direction) is adequate to properly describe the surface, i.e. Eq. 4 is satisfied. This is usually
the case for rural areas with modest surface undulations. In these situations, the use of image data to support the surface
extraction process is rather limited and is mainly restricted to fill in areas with missing LIDAR spots. Except for these
rare cases, the primary purpose of the simultaneously acquired image data is visual coverage, the ortho-rectified
backdrop of the surface. The second and more important case is when the sampling rate of the LIDAR system is not
adequate for the required surface representation with respect to the requirements of the mapping objective. This is the
typical case for urban areas and will be discussed in the following.
4.3 Under-sampling over Urban Areas
Surveying of densely built-up urban areas is in high demand and yet this is one of the most difficult mapping tasks to
perform. This is primarily due to the large number of man-made objects with lots of vertical surfaces, occlusions.
shadows, moving objects, etc. Probably the surface discontinuities, generally called break lines, represent the most
difficult problem, and from a strictly theoretical point of view, they would require a diminishingly small sampling
distance. Consequently, this is the case where anything that can increase the sampling frequency for the LIDAR system
is appreciated. Multiple laser returns, which are used primarily for vegetation separation, can virtually increase
sampling rate locally by providing two (or more) observations for one laser pulse; for example, from the ground and
from rooftops. However, this is a very rare scenario since the probability that the laser beam hits the edge of a building
is very small. Therefore, the only way to introduce additional information into the surface extraction process is the use
of simultaneously acquired imagery. It is important to note that the images come fully oriented. On the one hand, digital
cameras capture them and thus the interior orientation is automatically given (basically preserved from the camera
calibration). On the other hand, the LIDAR system assumes the use of a high-quality direct sensor orientation system,
which by design easily provides the exterior orientation data.
902 International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B3. Amsterdam 2000.