International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B3. Istanbul 2004
with SFS and “non ground” with TerraScan (see Figure 10):
this is in agree with results obtained for simulated data.
9000
8000 +——
7000 =
6000 +
5000
4000 4——
3000 =
2000
1000
BSFS
Bl TerraScan
Ground Points Non-Ground Points
Figure 10: SFS vs. TerraScan classification of Gorizia points.
About the location of the two classifications, while they
substantially correspond for building and vegetation zones, the
disparities mainly occur for roads and parking areas.
edi : ^ 2 E : i B
Figure 11: LIDAR DSM of the city of Gorizia (Italy).
Figure 11 shows the DSM obtained with such LIDAR data. The
results of filtering/classification by SFS algorithm are painted
over with green spots when ground classified, red spots
otherwise (outliers). They seem to be very truth, so the SFS
correctness is qualitatively proved, being very hard to exactly
evaluate it quantitatively (cars positions are unknown/variable).
6. CONCLUSIONS AND FUTURE PERSPECTIVES
This paper illustrates a new robust technique for the filtering of
non-ground measurements from airborne LIDAR data. The
algorithm represents an efficient method for automatic
classification of LIDAR data, mainly based on a newly
developed tool for robust regression analysis and robust
estimation of location and shape. The main advantage of using
SAR models and BFS algorithm relies not only on its accuracy
but also on its statistical robustness. It makes possible to
efficiently and simultaneously detect either trend surface or
outlier points by suitably enlarging a data subset.
Through a significant number of examples, the paper shows
how the proposed SFS method is a valuable tool for the purpose
of filtering LIDAR height measures and terrain modeling. Here,
examples of rough terrain were processed, showing that the
method can deal with dataset containing many break lines.
Besides the Gorizia dataset shown in this paper, the method is
currently being applied to other large urban datasets of
increasing point density, for the goal of building extraction also.
In a near future, to improve the efficiency of the SFS algorithm,
other space interaction models will be tested, as second order
SAR models and Conditional AutoRegressive models (CAR).
200
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ACKNOWLEDGEMENTS
This work was carried out within the research activities
supported by the INTERREG IIIA Italy-Slovenia 2003-2006
project *Cadastral map updating and regional technical map
integration for the Geographical Information Systems of the
regional agencies by testing advanced and innovative survey
techniques".
* Insi
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