Figure 5: Line pixels (black) and no-line pixels (white) ex-
tracted from intensity.
Figure 6: Line pixels (black) and no-line pixels (white) ex-
tracted from intensity and coherence.
cess of the ribbon snake-based extraction: Only by opti-
mizing from the given ends inwards it was possible to track
the pipeline avoiding to get stuck to other lines with high
posterior odds.
5 CONCLUSIONS
The fusion of SAR intensity and interferometric SAR co-
herence data for line extraction using a Bayesian approach
has been introduced. The new method applies an MRF
model to suppress speckle-related line gaps. Results are
line pixels with line directions and posterior odds showing
Figure 8: Pipelines and roads extracted with ziplock snakes
from posterior odds superimposed to SAR magnitude.
the strength of the line state in comparison with the no-line
state.
The posterior odds contain line information from both data
sources. They can be used for further object extraction.
Here, they have been input to a ziplock snake-based ex-
traction of pipelines. Though, it would be desirable to
conduct the extraction automatically, interactive process-
ing was necessary to achieve reliable results. The rea-
sons for difficulties of automatic processing are twofold.
(1) Despite of the speckle suppressing effect of the MRF
model, the posterior odds have a high noise level. They
contain many structures which are caused by other objects
than pipelines, e.g. by terrain features, which confuse auto-
matic extraction. (2) The object model of the ziplock-snake
536 Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
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