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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2.2 Pros and Cons
The acceptability and utilization of true orthophotos should be
compared by the pros and cons of the process and their
properties.
The high investment of the flight, the calculating process and
the high requirement of the hardware is accompanied by the
higher automatism and the endproduct. The output is an
orthophoto without any disposal or occlusion in the image,
where all visual content will be shown in the correct location.
Furthermore, the long time needed seam line digitalisation of
normal orthophotos to correct geometric mistakes is not
applicable. Uses, like digitalisation or classification are easier
and more detailed. It does not matter if the images are RGB or
CIR. In both color spectrums, true orthophotos can be
generated.
The nicest secondary effect is that the process of the true
orthophoto makes a high resolution surface model as a co
product in the same resolution as the orthophoto. This DSM can
be used by other applications and for analysis of questions.
The DSM can be the base for generating a digital elevation
model. But it must be said that in large closed areas of
vegetation, there are no points on the ground. In this case the
generation of the DTM is very difficult and needs other data or
more algorithms to calculate and interpolate the ground height.
A semi - automatic process is needed in these cases. With free
sight to the ground there will be an accuracy and a level of
detail not reached by normal models made by a laserscanner.
Mobile objects, like cars or motor bikes will be displayed
diffused, confusing some users.
3. AUTOMATIC TREE EXTRACTION AND
CLASSIFICATION IN FORESTRY
Especially in the forestry sector, the working with true
orthophotos has proved itself and is the base for the forestry
data acquisition in the house of FMM. This includes automatic
tree extraction, inventory differentiation and volume
calculation.
This information must be updated and renewed permanently,
because the forest industry has to react quickly to exterior
factors like bug infestations, storm loss and deforestation. A
mostly automatic process on the base of true orthophotos is a
maintask of the work of FMM.
3.1 Datastructure
For the analysis of forestry information, FMM uses true
orthophotos with resolution of 12cm and their digital surface
models. With the characteristic of the aerial camera
(UltracamX) to make multi spectral images, it is possible to get
CIR images in addition to RGB images simultaneously.
The images in the near-infrared range are used for the
classification of vegetationdata.
This grid data will be split in 500*500m tiles for faster
analysis.
Furthermore a DTM from a laserscan flight are used to
normalize the surface data. That is affected by the region, where
the data will be analysed.
In mountainous regions it is advisable, but in a flat region, a
normal interpolation can be used.
3.2 Tree extraction
Generally the tree extraction in the true orthophoto is easier
than in normal orthophotos, because the tree have no disposals
and are in correct position in picture and DSM.
The combination of DSM and DTM from laserscanning flight
provides a quality control between both models and as well as a
standardization of forestareas.
With that way it can be taken the relative height of the tree
exactly and fast, which is not unimportant for the further
development. A DTM is essential, because the consistence of
the terrain in big forestareas can be catched in the produced
DSM.
Based on an objectoriented algorithm, which registered local
maximum in the DSM, will be detect the height and height
changes, what from possible treetops can be suggested.
In addition to the position of the tree, information about the
characteristics and the species of the trees can be detected. The
algorithm was developed by FMM in cooperation with some
universities in Austria and optimized for the high requirements
of hardware by FMM. High performance the hardware is
needed, because of the large amounts of data. With an adequate
tile format for the model, the working process can be controlled
and accelerated. 380000 trees can be extracted in around 20
hours. That means an area with around 16 square kilometers.
After detection of all heights and topforms of the trees, it is
possible to make a segmentation of the species of trees. In the
first step it can differ between broadleaf tree and conifer. In a
second step with the help of the CIR images, it can be analyzed
and filtered for the species of the tree. Every species has its own
characteristics.
With example measurements and available data, an accuracy of
90 - 95 % of the extraction in matured timber could be proven.
This statement relates to the mass of the timber in a body and
the object extraction as comparably. The last 5-10 percent of
error is a result of not visible trees in the area of vegetation.
Figure 5. Tree height detection