International Archives of the Photogrammetry, Remote Sensing
Table 3. Accuracy results for classified image from pixel-based cl
and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004
assifications and object-oriented image analysis.
Paralellpiped Classification Minimum Distance Classification Maximum-Likelihood Object-Oriented Classification.
Classification :
Class Name Producer User's Kappa Producer User's Kappa Producer's User's Kappa Producer's User's Kappa
s Accuracy Statisti S Accurac Statistic Accuracy Accurac Statistic Accuracy Accurac | Statistic
Accuracy % c Accuracy y 96 % y Yo % y Yo
% %
92.632 100.000 1.0000 94.737 100.00 1.000 94.737 100.00 1.0000 100.00 100.00 1.0000
dam lake 0.000 0.000 0.0000 0.000 0.000 0.000 0.000 0.000 0.0000 100.00 100.00 1.0000
settlement areas 11.111 66.667 0.6486 16.667 100.00 1.000 11.111 66.667 0.6486 50.00 75.00 0.6670
dense forrest 94.792 65.942 0.5307 98.958 56.548 0.401 93.750 67.164 0.5475 100.00 100.00 1.0000
open areas 15.094 61.538 0.5467 9.434 62.500 0.558 16.981 47.368 0.3798 80.00 66.70 0.6280
coal waste 12.500 100.000 1.0000 12.500 11.111 0.090 12.500 33.333 0.3177 80.00 50.00 0.4420
wood land 45.000 38.710 0.2055 31.250 33.211 0.160 52.500 41.584 0.2428 91.70 91.70 0.8890
Table 4. Kappa and overall accuracy values for pixel-based classifications and object-oriented technique.
Accuracy Statistics Paralellpiped Minimum Distance Maximum-Likelihood Object-Oriented
Classification (%) Classification (9) Classification (76) Classification (96)
Overall Accuracy 64.571 62.571 66.857 81.30
Overall Kappa Statistic 0.532 0.499 0.558 0.766
However, object-oriented classification produced more
accurate results. The reason for this is that the compactness
of the segments. Thus, kappa and the overall accuracy are
much better. In table 4, while overall accuracy was 81.30 for
object-based segmentation, it was only 66.86 for the best
classical classification technique of maximum likelihood. For
kappa values, some trends occurred and it is 0.77 for object-
based image analysis.
5. CONCLUSION
In this paper, new object-oriented image analysis technique
has been compared with the classical and the well-known
image classification methods using Landsat-7 ETM image of
Zonguldak testfield. In the implementation of the tests,
paralelepiped minimum-distance and the maximum-
likelihood approaches are taken as pixel-based methods.
Their capacity with used Lansdat image has been analysed
based on the ground truth materials over the interest area.
Howver, on the other hand, eCognition software for object-
based classfication works in hierarchy, first with
segmentation, then the fuzzy classication. Detailed accuracy
results were obtained as error matrices and they show that the
object-based image anaysis is far beyond the classical
methods in terms of accurate classification of the objects.
6. ACKNOWLEDGEMENTS
This work was carried out under the projects supported by
TUBITAK (Turkey) - JULICH (Germany) cooperation with
a code no. 101Y090 and Karaelmas University project no,
2001/45-01.
7. REFERENCES
Benz, U. C., Hofmann, P., Willhauck, G., Lingenfelder, I.
2003. Multi-resolution, object-oriented
and Heynen, M.
GIS-ready
fuzzy analysis of remote sensing data for
information, ISPRS Journal of Photogrammetry & Remote
Sensing, 58 (2004) pp. 239-258
eCognition User Guide 3. 2003. Definiens Imaging, pp. 3.2-
108
Lillesand, M.,Tt., Kiefer, W., R. (1994). Remote Sensing and
Image Interpretation, Third Edition, John Wiley & Sons,
Inc., New York, 750 pp.
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