In: Wagner W., Szekely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
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shape result in one segment, whereas large deciduous trees with
multiple tree tops are represented by multiple segments (one per
convex tree top). For selected 181 alley trees the average
number of segments per tree is 2.6, indicating over
segmentation and trees with multiple tops, respectively. Within
the park areas with larger deciduous trees the number of
segments per tree lies clearly higher but could not be assessed
due to missing reference positions. Over-segmentation can also
be reduced by prior filtering (e.g. Gauss filter) of the DSM in
order to reduce canopy roughness and suppress small structures
(cf. Hirschmugl et al., 2007).
7 - Non-Vegetation
Perc. of echoes above min. height (2 m) [%]
>99.0
Mean amplitude of first echoes [DN]
>50
Mean amplitude of last echoes [DN]
>100
Mean echo width of first echoes [ns]
<4.1
Std.dev. of echo width of first echoes [ns]
<0.35
Std.dev. of heights of first echoes [m]
> 10
Std.dev. of heights of first echoes [m]
<0.2
ER of segment [%]
<5
Compactness &&
> 1.7
Mean nDSM height [m] &&
>3.0
Stddev. of height of first echoes &&
> 1.0
Perc. of boundary covered by neighbors
< 60%
6 - Shrubs
Mean nDSM height [m] &&
<3.0
Std.dev. of heights of first echoes [m]
< 1.0
5 - Stem (reference)
Distance to reference tree position [m]
< 1.0
1 - Detached
No. of adjacent segments
<0
2 - Semi-detached
Pere, of boundary covered by neighbors
<20
4 - Potential stem segment
Number of echoes in height interval 1.0 - 2.5 m
> 10
3 - Crown segment
All remaining segments
Table 1. Rules and thresholds on segment attributes for
detecting vegetation and further characterization
Although the constraint on ER already excluded the majority of
non-vegetation objects, the segments still contain non
vegetation objects such as building walls, roof overhangs,
transparent roofs and power lines. Thus, full-waveform point
cloud information derived on segment level is valuable for
separating vegetation from non-vegetation. Particularly, echo
width and signal amplitude show clear signatures for vegetation
(refer to Fig. 4). Vertically extended objects with a multitude of
small scatterers (e.g. branches) exhibit larger echo widths and
lower amplitudes due to the relatively small target areas
contributing to each echo (cf. Wagner et al., 2008). The main
part is to exclude non-vegetation segments. Through
exploratory data analysis and visual inspection suitable
attributes and thresholds could be obtained. Table 1 shows the
applied rules to the rule base defined in Fig. 5 and Fig. 8 the
resulting classified segments. For example, the percentage of
echoes above the min. tree height of 1 m indicates a low ground
penetration, which mainly occurs at building walls not
connected with the ground, transparent roofs, antennas on roofs,
and even vegetation on top of buildings, exhibiting an ER
above 5%. Building facades can be excluded by high
compactness, as they are elongated, and high std.dev. of first
echo heights together with low coverage of adjacent segments
and relatively high mean nDSM heights. High nDSM heights
for vertical walls are also due to the generation procedure of the
DSM, where the maximum height value per cell is taken.
Shrubs are distinguished by using mean nDSM height and
std.dev. of first echo heights, which is assumed to be lower than
for trees.
Figure 8. Classified vegetation segments further separated into
six sub-classes.
This manual set up and selection of attributes and thresholds
will be replaced by automatic classification procedures in future
such as statistical classification trees (Rutzinger et al., 2008) or
Support Vector Machines (Mallet et al., 2008), which have
already been applied to classify single laser points of large
point clouds. The segment-based approach may lead to more
stable features for classification (e.g. mean echo width per
segment; cf. Rutzinger et al., 2008) but is strongly dependent on
the quality and delineation accuracy of the segmentation. The
current state of segmentation and classification provides the
necessary input for vegetation mask generation and derivation
of tree segment parameters (e.g. height, diameter, position) for
visualization purposes by reconstructing artificial tree objects
(cf. Vosselman, 2003). However, for urban tree inventory single
tree detection is required and tree positions should be derived
from stem detection. The class of potential stem segments could
be a starting point for further point cloud based stem extraction.
Multi-level/scale segmentation, i.e. further segmentation on the
derived segments, could solve the problem of over
segmentation (Blaschke, 2010) and join segments belonging to
one tree. Promising studies have already shown the potential of
point cloud based single tree detection for airborne (Reitberger
et al., 2009) and mobile LiDAR data (Rutzinger et al., 2010).
No point cloud segmentation is required for the class of
detached tree segments, representing a single tree object. But
for trees with multiple tops and no distinct crown shape 3D
point cloud segmentation shows great potential, providing the
required information inherent in the vertical sampling of the
objects by airborne LiDAR. Multi-level LiDAR analysis, such
as prior image based detection of candidate regions with
following point cloud based object detection increasing
delineation and classification accuracy offers the possibility to
process large areas even with very high point densities in an
operational manner without major loss in classification
accuracy, if the pre-selection has high completeness (cf. Hofle
et al., 2009).
For evaluation the alley tree inventory (i.e. tree positions) is
used. Out of 668 alley trees 639 (95.7%) could be successfully
detected and included in the final vegetation mask. The missing
trees are mainly young trees with low diameter and crown area,