International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004
Accuracy of pixel- and standwise tree species classification
100 1
30
Classification accuacy (76)
3 4
Featureset
Figure 4. The classification accuracies of pixelwise and
standwise tree species classifications. The solid line with "o"
represents the overall accuracies, solid line the mean of user's
and producer's accuracies of pine, dashed spruce and dashdot
deciduous trees. The accuracies of standwise classifications
have been represented with "x".
5. CONCLUSIONS
These results illustrate that it is difficult to make accurate land
cover classification using one frequency, one polarization
microwave information even if there are some temporal
resolution or low resolution optical data available. More
information about the target would be needed, like
interferometric coherence, or more than one frequency or
polarization. The feature extraction increased classification
accuracy a bit but not much. The standwise classification
increases accuracy due to feature averaging.
The decision based data fusion using a'posteriori probabilities
of low resolution classification as a'priori probabilities of high
resolution classification shows promise, but needs some
development. The increase of overall and classwise accuracies
in this study were more than 10 and 25 %-units, respectively.
One alternative could be to compute lower resolution images
from ERS-images and form them to hierachical series.
Interpretation would begin from lowest level and higher level
could use lower-level interpretation as input.
ACKNOWLEDGEMENTS
The authors would like to thank National Technology Agency
Tekes for financial help. European Space Agency has provided
ERS SAR-images under AO-project "Retrieval of boreal forest
and surface characteristics from Envisat multisensor data".
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