TREE MODELING WITH DSM DATA
Keonsoo Park, Jehoon Park, Choi Ji-Hoon, Sun-Jeong Kim and Chang-Geun Song
Department of Computer Engineering, Hallym University, Gangwon-do, Korea
Keywords: LiDAR, Tree, Forest, DSM, DEM.
Abstract: This study aims to resolve the problem of not being able to directly examine forests or each individual tree
of a forest. In order to get the specific information on actual trees. Such as their locations, heights and the
number of trees. We used an aerial photograph that is 4096x4096 pixels. And process the DSM/DEM data
with a raw 16 bit-‘unsigned short’ data value. Through the collected information, we might model trees and
a forest.
1 INTRODUCTION
Tree modeling refers to acquiring important
information on trees such as location, height, width
and the number of trees. LiDAR (Light Detection
And Ranging) is a space information acquiring
technology where many laser pulses (70 KHz) are
shot from a plane and the reflected laser pulses are
used to acquire high definition height information of
the surface to create an accurate model of the laser.
It is a new measurement technology that can be used
to acquire high quality 3D digital data. Tree
modeling with LiDAR data will increase efficiency
when designing golf courses with lots of trees. This
study introduces a solution to not being able to
directly examine or explore forests and each
individual trees by using an 4096X4096 aerial
photograph and processed DSM/DEM data with a
raw 16 bit-‘unsigned short’ data value a tree
modeling method.
2 PREVIOUS STUDIES
Tree modeling has previously been studied in a
variety of different ways in the field of remote
sensing. First, there was the study where a sectional
maximum filter was applied to a certain band and
the satellite image resolution value was used to
predict the central point of trees. There was also the
study where an aerial photograph and LiDAR data
were converged and a division method was used to
estimate the height of each tree. Although both these
methods provided adequate solutions, they failed to
provide a way to isolate and explore individual trees
within the data collected.
3 METHOD AND RESULTS
Figure 1 shows the process for tree modeling used in
this study. Previously, three parameters were
produced for modeling purposes location, height and
the number of trees. We expect to be able to enhance
the existing modeling techniques to be able to
differentiate the kinds of trees such as broadleaf or
needle leaf trees. Our method consists of 4 major
stages; First, extraction of areas where there are
predicted to be trees; second, calculation of eigen
value; third, elimination of errors in division; fourth,
division of basin.
Figure 1: Tree modelling process.
189
Park K., Park J., Ji-Hoon C., Kim S. and Song C..
TREE MODELING WITH DSM DATA.
DOI: 10.5220/0003840401890192
In Proceedings of the International Conference on Computer Graphics Theory and Applications (GRAPP-2012), pages 189-192
ISBN: 978-989-8565-02-0
Copyright
c
2012 SCITEPRESS (Science and Technology Publications, Lda.)