2. RELATED WORK
A common and well-known task is the estimation of forest
carbon stocks. Good et al. (2001) present a compilation for
estimating the biomass of individual trees, including double
regression, ratio sampling, Randomized Branch Sampling
(RBS) and Importance Sampling (IS). The most common
method is the application of allometric functions (e.g. Zianis,
Mencuccini, 2004). Due to the potential of terrestrial laser
scanners to rapidly and accurately acquire suitable data for
estimation of tree volume (Lefsky, McHale, 2008), several
research groups are currently adapting and enhancing this
approach. Based on techniques of Computer Graphics and
Remote Sensing (an overview is given in Bucksch et al. (2010))
the aims of this research are volume determination (e.g. Lefsky,
McHale, 2008; Raumonen et al., 2011; Dassot et al., 2010),
structural and radiative consistency (Cóté et al, 2009),
estimation of branch parameters, including length, radii or
straightness of stem and branch (Bucksch, Lindenbergh, 2008;
Bucksch et al, 2010; Gorte, Pfeifer, 2004a,b; Pfeifer,
Winterhalder, 2004; Pfeifer et al, 2004), branch size
distribution (Raumonen et al, 2011), dimensionality of tree
stems (Gatziolis et al., 2010), angles between branches, and the
reconstruction of the outer hull (Pfeifer et al., 2004). In addition
to measurements of diameters, three basic approaches can be
found: (i) extraction of a skeleton of a tree (Bucksch,
Lindenbergh, 2008; Bucksch et al, 2010; Gorte, Pfeifer,
2004a,b; Coté et al., 2009; Xu et al., 2007), (ii) fitting pre-
defined primitives, e.g. cylinders (Pfeifer et al., 2004; Lefsky,
McHale, 2008; Raumonen et al., 2011), free-form curves (B-
Splines) (Pfeifer, Winterhalder, 2004; Yan et al., 2009) or mesh
in general sense (Xu et al., 2007), (iii) structuring the point
clouds in a voxel domain (Gorte, Pfeifer, 2004a,b; Gatziolis et
al., 2010). The main challenges in this field of research are the
large data requirements (varying from several thousand to
commonly 2 million points), noise (rarely treated, e.g. Gorte,
Pfeifer, 2004a,b, but discussed as error source, e.g. Bucksch et
al, 2010), varying point densities (may lead to over- or
underestimation of tree volume, e.g. Leksky, McHale, 2008),
gaps or holes, the vast variety of branch diameters and lengths
with a tree and a reliable estimation of complete stem and
crown volumes — rarely presented in these approaches.
3. DATA ACQUISITION AND PRE-PROCESSING
The test site was located at the urban area of Karlsruhe city in
the Upper Rhine Valley, Germany. From about 560 trees
scheduled to be cut and weighed by the Gardening Department
of Karlsruhe (GBA) during winter period 2009/2010, nine
deciduous trees were chosen as suitable control data for these
investigations. Additional aspects were a low level of
interpenetration of the crown with adjacent trees, the absence of
leafs, fruits, ivy or mistletoe and a variety of different tree
species (Acer spp. (denoted by A1, A2, A3), Tilia Spp. (T1, T2),
Robinia spp. (R1, R2), Betula spp. (B1) and Carpinus betulus
(C1); c£. Table 1). Before felling, each tree was scanned from
three to five positions with a Leica HDS 6000 using the finest
scan incrementation of approx. 2mm at an average distance of
10m and a point accuracy of about +3mm. To obtain a highly
accurate registration of these individual point clouds (using
Cyclone 5.8%), five sphere targets had been positioned around
each tree. The standard deviation ranges from 41mm to +2mm
for all investigated trees. To convert green weight at felling time
to dry volume and carbon content several wood samples at
different heights were collected and analysed after felling.
A point cloud reduction using an average point spacing of 2mm
was also carried out (Cyclone “unify” procedure) as well as a
manual elimination of disturbing objects like traffic Signs,
parked cars or branches of neighbouring trees.
4. DATA ANALYSIS
Data analysis starts with the generation of the voxel structure
and the assignment of the laser points to this voxel domain.
Voxels without points are not considered in the subsequent
analysis. The necessary definition of a suitable voxel size
depends on the applied scan resolution of the terrestrial laser
scanner and the dimension of the finest branches to be
measured. A certain number of points per voxel should be
achieved, e.g. with a voxel edge length of lcm like in this
application and diameters of finest branches of 3-4mm about 20
points per voxel will be obtained, which can be subsequently
distinguished from voxels containing noise or so-called
"phantom" points, well-known in the domain of terrestrial laser
scanning. Based on this voxel structure a specific approach was
developed which analyses the data in horizontal layers of one
voxel thickness.
4.1 Noise Reduction
Two different kinds of noise reduction are carried out: (1)
elimination of isolated voxels and (ii) elimination of voxels with
a small number of laser points. In the first case those voxels
should be excluded which are not connected to the free, i.e.
which are isolated (cf. Gorte, Pfeifer, 2004a). Based on a N26-
neighbourhood (comparable to a N8-neighbourhood in 2D) or a
N124-neighbourhood, the central voxel is eliminated if all
adjacent voxels are empty, because it implies that there is a gap
between the surface of the tree and the particular points.
A second method of noise reduction was applied to eliminate
voxels which are sparsely filled by laser points, ie. voxels
containing fewer points than a pre-defined threshold. For rough
volume estimations a threshold may be defined by experience,
but our investigations have shown that this threshold varies
dependent on the tree type and therefore must be determined by
a specific method explained in section 4.4.
4.2 Filling of Hollow Surfaces (Interior Voxel)
One challenge of voxel-based approaches for determination of
tree volumes is the determination of hollow surfaces, i.e. voxels
lying inside the stem and branches which contain no laser
points but have to be taken into account for volume
calculations. Mathematical morphology (dilation, closing) may
be a possible method (e.g. Gorte, Pfeifer, 2004a), but the
problem in this application is that the dimension of the hollow
surface exceeds the space between narrow branches leading to
erroneously filled areas which cannot be reversed (e.g. by
erosion). Therefore, another procedure was chosen based on the
intersection of the four areas of obstructed vision from four
orthogonal directions. It is robust, fast, does not need prior
information, and fits to all forms of branches and stems.
Additionally, repeated iterations (cf. mathematical morphology)
are not required.
Figur
in fou
voxel