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ar ice in
sified as
open water. However, the division of the open water
class into two classes was problematic in scenes
where both subclasses were open water.
This algorithm provided a unique method for
identifying ice features that had a range of tones.
However, a method to determine when a class
contains a mixture of ice and open water, as well as
an improved mechanism to decide when a cluster
should be subdivided would improve the algorithm.
The results of algorithm E (Hierarchical Network) for
two class separation indicated promising results over
the size of areas processed (256 by 256 pixel). When
the number of classes was increased the results were
less favourable. The subarea extracted from image
number 3 included multi-year ice floes (bright tones),
new ice (medium tones), and open water leads (dark
tones). In this case the distinction between the open
water in the leads and the new ice was not possible.
5.0 RADARSAT ISSUES
Several issues need to be addressed with respect to
implementing spectrally based algorithms for the
processing of Radarsat Scansar data. Of particular
interest, in the context of this paper, are the
characteristics of the backscatter coefficients for ice
and water in c-band horizontally polarized SAR data.
The 500 km swath of Radarsat ScanSAR data will
range over incidence angles from 20?-50?. Figure
1 illustrates the radar backscatter as a function of
incidence angle for both C- and X-band SAR data
during the winter and summer (Onstott, 1992). The
figure illustrates a large amount of variability in C-
band signatures over the range of incidence angles
that will be collected. The X-band data on the other
hand has a relatively uniform return over those same
incidence angles. For C-band imagery, the variation
in target response with range for both ice and water
is significant. For example, for calm water the
winter time response at 20° is approximately -15dB,
where as at 50° is -40dB; a variability 25dB.
Compared with X-band where the variability in
response is only 10dB (from -25dB to -35dB).
6.0 CONCLUSIONS
Spectral classifiers were selected because of their
computational speed and efficiency, which is of great
importance for operational implementation. The five
algorithms that were selected for evaluation were
representative of all classes of spectral algorithms
described to date in the literature. Seven image
scenes from different geographic regions, seasons and
acquired by different sensors provided a broad dataset
with which to evaluate the properties of each class of
algorithm and define their strengths and limitations.
These data allowed for the evaluation of systematic
effects observed in uncalibrated SAR data, and
geophysical features that confuse the signatures of ice
and water.
The results indicate that all algorithms have the
ability to separate ice from water under ideal
conditions. The performance of each individual
algorithm on an image to image basis was variable
depending on the degree of systematic or geophysical
variability within the image. In particular, variations
in backscatter as functions of incidence angle, or ice
type, combined with the characteristics of parameters
within the algorithm, (such as filter size), all
combined to generated the results that were achieved.
This work was an important first step in the
development of an operational algorithm for the
separation of ice from water within uncalibrated SAR
data. The evaluations afforded a greater
understanding of the issues that need be addressed.
Several recommendations for further work need be
examined, they include;
An approach to process subareas of the image and
produce a seamless output is required to overcome
the systematic variation in the signal with range.
All the tested algorithms extract samples from an
image without regard to their location and generate
one discriminant function which is applied to all data
within that scene. However, when the imagery
contains systematic variation in pixel intensities in
range, a single discriminate function is inadequate.
Characterisation of the expected stability of the
image backscatter (intensities) from scene to scene
should be conducted for all SAR systems to be
used by a classifier.
A priori knowledge on image characteristics which
will be stable from scene to scene can be used by an
algorithm to improve its classification accuracy. This
applies to the range of intensities for each ice type as
well as systematic radiometric anomalies introduced
by the sensor and image formation processes.
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