In: Wagner W., Székely, B. (eds.): ISPRS TC VII Symposium - 100 Years ISPRS, Vienna, Austria, July 5-7, 2010, IAPRS, Vol. XXXVIII, Part 7B
551
Catrgory
(%)
Iteration
0
Accuracy
Iteration Iteration
1 2
Iteration
3
Building
80.75%
88.28%
88.92%
89.46%
Water
92.12%
92.93%
90.26%
90.14%
Farmland
39.96%
36.86%
34.11%
34.11%
Woodland
92.03%
95.28%
93.97%
93.84%
Average
77.89%
80.27%
78.84%
78.89%
Tabel 1. Segmentation accuracy
5. CONCLUSIONS
In this paper, an AdaBoost-based iterative Markov Random
Fields (MRF) with Linear Target Prior (LTP) has been
proposed. Applied to Synthetic Aperture Radar (SAR) images
classification, three strategies have been provided in this model
to improve regions edges and isolated points in classification
results and effective performance has been obtained. Firstly,
due to superpixels captured from ratio response map of SAR
images instead of original SAR images, edge information has
been utilized more effectively. In this case, classification
experiment results show distinct edges of regions. Secondly,
linear target prior introduces consistency information along the
linear targets into Markov model. Combined with traditional
neighbourhood prior information, more reasonable
classification results have been gotten in the experiment.
Thirdly, the employment of iterative strategy makes the
proposed approach have self-perfection in a stated degree. And
the experiments have a certain improvement with the increase
of iteration times.
Nevertheless, lots of information extracted from polarimetric
SAR data, interferometric SAR data and polarimetric SAR
interferometry data can be used for SAR image analysis.
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7. ACKNOWLEDGMENTS
The work was supported by the NSFC grant (No. 60702041,
60872131, 40801183) and Hi-Tech research and development
program of China (863) (No. 2007AA12Z155, 2007AA12Z180).
The authors would like to thank the SPOT IMAGE Corporation
for providing the TerraSAR image.