In: Wagner W., Szekely, B. (eds.): ISPRS ТС VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
correct: 90.37%
ground truth
forest
non-forest
estimation
forest
40.01%
7.68%
non-forest
1.96%
50.36%
Table 4: Confusion matrix of forest segmentation.
Forest Border Lines. Finally, forest border lines can directly be
extracted from the segmentation result via edge detection. Fig
ure 8 shows some examples. Overall, the quality of extracted
forest border lines is higher for huge dense forests than for small
isolated stands (this aspect was also observed in (Breidenbach et
al., 2009)), where small stands are often not detected at all. Nev
ertheless, forest border lines are in general very well extracted
and their accuracy is directly dependent on the forest segmenta
tion.
ground truth TerraSAR-X derived
Figure 8: Detailed views on forest border line extraction for two
subsets. On the left ground truth border lines are given and on
the right the automatically extracted borders using TerraSAR-X
alone.
5 CONCLUSIONS AND FUTURE WORK
TerraSAR-X imagery enables the retrieval of certain forest
parameters. In particular, multiple TerraSAR-X images
representing the same area on ground under different look angles
can be used to fully automatically derive accurate DSMs. In case
when reference DTMs are available the canopy height model
can be extracted. Such forest canopy height is an important
parameter as it is strongly correlated with forest parameters, such
as forest biomass, timber volume or carbon stocks. Furthermore,
it serve as an important cue for classification of forest types
and condition, forest morphology, crown closure, vertical
structure and stands height (Hyyppa et al., 2000). The presented
study revealed that the height of the canopy is systematically
underestimated as the SAR signal in X-band penetrates into the
canopy. Therefore, a forest segmentation is proposed yielding
an accuracy of 90%. This segmentation result is subsequently
applied to correct the canopy height bias in regions of forest.
Incorporating this approach, the TerraSAR-X DSMs have an
average height accuracy of 20 cm and a standard deviation of
about 2 meters on bare ground and over forest.
However, the canopy underestimation depends on various
aspects, including tree species, forest stand density, tree height
and look angles. The forest used in the presented study
domiciles more or less exclusively dense stands of deciduous
trees. It is therefore expected that the canopy underestimation
will be larger for coniferous trees and for clearer stands.
Future work should focus on a comparison to TanDEM-X DSMs
compromising multiple InSAR pairs with different look angles
to further understand the penetration into the canopy of X-band
signals.
REFERENCES
Bamler, R., Adam, N., Hinz, S. and Eineder, M., 2008. SAR-
Interferomterie für geodätische Anwendungen. Allgemeine
Vermessungs-Nachrichten pp. 243-252.
Breidenbach, J., Oritz, S. and Reich, M., 2009. Forest monitor
ing with TerraSAR-X: first results. European Journal of Forest
Research.
Bresnahan, R C., 2009. Absolute geolocation accuracy evaluation
of TerraSAR-X-1 spotlight and stripmap imagery - study results.
In: Civil Commercial Imagery Evaluation Workshop.
Eineder, M., Fritz, T., Mittermayer, J., Roth, A., Boemer, E.
and Breit, H., 2008. TerraSAR ground segment - basic product
specification document, doc. tx-gs-dd-3302, issue 1.5, 103 pages.
Technical report, DLR, Cluster Applied Remote Sensing.
Haack, B., Herold, N. and Bechdol, M., 2000. Radar and optical
data integration for land-use/land-cover mapping. Photogram-
metric Engineering and Remote Sensing 66(6), pp. 709-716.
Hyyppä, J., Hyyppä, H., Inkinen, M., Engdahl, M., Linko, S. and
Zhu, Y.-H., 2000. Accuracy comparison of various remote sens
ing data sources in the retrieval of forest stand attributes. Forest
Ecology and Management 128(1), pp. 109-120.
Izzawati, Wallington, E. and Woodhouse, I., 2006. Forest height
retrieval from commercial X-band SAR products. IEEE Transac
tions on Geoscience and Remote Sensing 44(4), pp. 863-870.
Perko, R., Raggam, H., Gutjahr, K. and Schardt, M., 2010.
Analysis of 3D forest canopy height models resulting from
stereo-radargrammetric processing of TerraSAR-X images. In:
EARSeL Symposium, Paris, France.
Raggam, H., Gutjahr, K., Perko, R. and Schardt, M., 2010a.
Assessment of the stereo-radargrammetric mapping potential of
TerraSAR-X multibeam spotlight data. IEEE Transactions on
Geoscience and Remote Sensing 48(2), pp. 971-977.
Raggam, H., Perko, R., Gutjahr, K., Kiefl, N., Koppe, W. and
Hennig, S., 2010b. Accuracy assessment of 3D point retrieval
from TerraSAR-X data sets. In: European Conference on Syn
thetic Aperture Radar, Aachen, Germany.
Tavakoli Targhi, A., Björkman, M., Hayman, E. and Eklundh, J.-
O., 2006. Real-time texture detection using the LU-transform.
In: Workshop on Computation Intensive Methods for Computer
Vision, in conjunction with ECCV.
Tighe, M., Balzter, H. and McNairn, H., 2009. Comparison of
X/C-HH InSAR and L-PolInSAR for canopy height estimation
in a lodgepole pine forest. In: Proceedings of 4th International
Workshop on Science and Applications of SAR Polarimetry and
Polarimetrie Interferometry.
Zebker, H. A. and Villasenor, J., 1992. Decorrelation in inter
ferometric radar echoes. IEEE Transactions on Geoscience and
Remote Sensing 30(5), pp. 950-959.
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