(XIX-B8, 2012
LUSIONS
ith that received in
nalyzed area is very
ied Digital Terrain
that variant ‘touch’
n ‘centroid’. This
han 500 m° real plot
s caused additional
influenced results,
es in spatial forest
| trees density and
lation is comparable
ltamo et al, 2004;
are very promising
species and spatial
tudy area.
lelineation and its
the best correlation
measurements was
ree heights and the
.egarding to this last
iportance.
measurements and
| higher when dead
cially important for
equently part of the
y inhomogeneous.
tional sample plots
:thod for dead trees
ondence between
auses problems in
Additionally lack of
ecrease the value of
] increase the error
ing : basic relations
iotogrammetry and
parison ^ between
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volume and stem
etry and expected
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6. APPENDIX
The presented work was performed under the project N N309
111937 "Development of methods of measurement of forest
resources by using airborne laser scanning (a case of the
protected mountain area)" Funded by the Polish Ministry of
Science and Higher Education (2009-2012).