International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B3, 2012
XXII ISPRS Congress, 25 August - 01 September 2012, Melbourne, Australia
local point density variations to include the required number of
points for reliable plane definition.
3.4 Boundary Detection
The major drawback of parameter-domain segmentation
techniques is that the spatial connectivity of points belonging to
each segment is not considered. Therefore, the points belonging
to coplanar but spatially disconnected planes will be segmented
into the same group. To resolve such ambiguity, a
neighborhood analysis is conducted through boundary detection
of the clustered points. The process of searching for each
boundary point is carried out in the local neighbourhood of the
previous boundary point. In order to define adaptive
neighbourhoods for sequentially finding the boundary points,
the estimated local point density indices should be taken into
consideration.
3.5 Terrain/Off-terrain Classification
In order to classify the clusters of LiDAR points into those
belonging to terrain or off-terrain objects, the discontinuity
measures between adjacent clusters should be considered. The
adjacency relationship between these clusters is defined by
analyzing the neighbourhoods of each cluster's boundary
points. For all the points in the boundary of each cluster, there
exist neighbourhoods which include the points belonging to its
adjacent clusters. In order to define adaptive neighbourhoods
which include the points belonging to adjacent segments, the
local point density index at each point's location should be
considered.
4. EXPERIMENTAL RESULTS
In this section, the performance of the newly developed
methods for the estimation of the local point density indices and
the impact of considering them on the quality of LiDAR data
segmentation results will be investigated by conducting
experiments using airborne and terrestrial LiDAR datasets.
4.1 Airborne LiDAR Data
The utilized airborne LiDAR dataset for this experiment
(Figure 7.3) has been collected over an urban area in
Switzerland with the Scan2Map mapping system. This dataset
exhibits significant local point density variations (estimated by
the approximate method) as shown in Figure 7.b. The results of
the planarity check for the individual points using the eigen-
value analysis and adaptive cylinder methods are presented in
figures 7.c and 7.e, respectively. Once the planarity of
individual points was checked and local point density indices
were calculated, the point density maps for the points belonging
to planar surfaces are generated using estimated local point
density indices (figures 7.d and 7.1).
] 28.89 Pnts/m"
0.12 Pnts/m?
W 28.05 Pnts/m?
EE Non-Planar \ s
0.03 Pnts/m?
l| 26.24 Pnts/m*
38 Non-Planar \ ii
(e) (f)
Figure 7. Airborne LiDAR dataset: (a) original LiDAR data,
(b) generated point density map using the approximate method,
(c) planarity check result using the eigen-value analysis relative
to the point in question, (d) generated point density map based
on eigen-value analysis relative to the point in question,
(e) planarity check result using the adaptive cylinder method,
and (f) generated point density map based on adaptive cylinder
method
0.004 Pnts/m°
To verify the importance of the processing of LiDAR data while
considering the estimated local point density indices, the
provided airborne datasets is processed using an adaptive
segmentation approach (Lari et al., 2011). The segmentation
process is carried out with and without considering local point
density variations. Figure 8.a shows the result of the airborne
LiDAR data segmentation without considering local point
density variations while Figure 8.b shows the result of the
segmentation of the same data considering the local point
density variations. Qualitative evaluation of the derived
segmentation results through visual inspection of Figures 8.a
and 8.b shows that considering the local point density indices
avoids some problems in the segmentation results, the most
visible one is the over-segmentation problem — as highlighted
within the red rectangles.
Figure 8. Airborne LiDAR dataset segmentation results:
(a) without considering local point density variations and
(b) considering local point density variations
4.2 Terrestrial LiDAR Data
The terrestrial LiDAR dataset (Figure 9.a) has been obtained
from a building façade in the University of Calgary campus
Int
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