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of segments or a threshold of the merging ratio
can be used to terminate the merging iteration.
A 512x512 NASA /JPL AirSAR C-band HH po-
larisation intensity image, acquired from Kakadu
National Park, Northern Territory, Australia, is
shown in Fig. 1. The image shows different types
of vegetation cover typically seen in the region.
Fig. 2 and Fig. 3 show the initial and final seg-
mentation, respectively.
Figure 1: A 512 x 512 pixel NASA/JPL Air-
SAR C-band HH polarisation intensity image,
acquired in 1993.
Figure 2: The initial segmentation.
3. CLASSIFICATION
Apart from bare and/or little vegetated soil,
which appears as the darkest areas in the image,
three types of vegetation cover also show in the
Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
Figure 3: The final segmentation.
image. They are wet Melaleuca, dry Melaleuca
and mixed woodland, marked as I, II and III,
respectively, which are indicated in the classified
image shown in Fig. 6. The measured C-band
HH data distributions for these areas are shown
in Fig. 4. It can been seen that those distribu-
tions are highly overlapped (especially between
I and III). The means of these areas are close to
each other while their standard deviations are
very high. Obviously the classification based on
such pixel-based measurements would be very
poor, as thresholds to separate these clusters
hardly exist when dealing with only pixel-based
measurements.
. After the image is segmented, uniform areas have
been circled, and the task of classification is to
classify segments rather than pixels. In the case
of the single-channel image, the useful informa-
tion in terms of classification for each segment
may include the mean, standard deviation and
texture characteristics. Details are discussed in
the following.
The mean is the most important and useful in-
formation, because radar backscatter models in-
dicate that the mean (the average of backscat-
tering coefficient) are highly correlated to physi-
cal parameters of the area being imaged, such as
above ground biomass, surface roughness, mois-
ture and so on.
The standard deviation of SAR image data is
generally highly correlated to the mean for uni-
form areas. The ratio of the standard deviation
to the mean (RSTM) for homogeneous areas, in
a given image, is approximately constant, which
depends only on the number of looks and the
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