)btained by
tribution for
/ and green
3s are then
following:
ndas.
ion degree
o they are
using the
cultivated
using band
pixels are
at even this
the mixed
now, green
low + green
2
134.6930
0.6757
0.6612
nd bandas.
As table 4 shows snow+green mixed pixels can be easily
confused with rice-field ones in bands3s and band4s.
The spectral signatures have high std.dev values because
the area to be classified is very wide and the class to be
considered are only 9 (snow, green, vegetation, building,
lake, sea, cloud, rice-field, cultivated field). The spectral
signatures are estimated with training sites selected all
over the region and so they express the class variability in
such a wide region.
8. NEW APPROACH FOR MIXED PIXELS TRATEMENT
Since the goal is to identify the blanket of snow all over
the Alps arc in NOAA imagery, no drastic changes in the
number of classes and in the recorded channels are
possible. So a good way to improve classification results
is following a new approach. The new approach has to
treat the mixed pixels in a different way.
9. FUZZY APPROACH TO CLASSIFICATION
Mixed pixels classification introduces the major problems
which are linked to the following reasons:
— large pixel size (1.1km x 1.1 km) and so many pixels
are made up by two or more classes;
— high std.dev of spectral signatures due to the high
variability of the classes in a such a wide region.
The complexity of the problem is double faced, because it
comes out both from real pixel composition and from
inaccuracy of spectral signatures. In such a context it is a
very hard task to assign each pixel to an unique class
having the only chance left not to classify the excessively
uncertain pixels.
Traditional classification assignments are total and
absolute, that is, one pixel can be strictly assigned or not
assigned to one class. As a classification result, each
pixel is characterised by its belonging to a unique class
only, mixed pixels included, and so mixed pixels cannot
exist in the classified images, even if they are present in
the first image.
This approach is rigid because it allows only total
assignment or total non-assignment and it does not allow
partial assignments and intermediate conditions, but
pixels having intermediate states are better described with
class membership degrees than with the most
representative class only.
Fuzzy logic just corresponds to the need of describing soft
and shading situations using membership degrees and
things stop to be crisply described as black or white
because they are represented in greyscale. Fuzzy
approach to classification does not assign pixels to a
unique class but describes them trough their membership
degrees to all classes; all the pixels in a Fuzzy approach
are like mixed and so they are described with their
membership degrees.
The result of a fuzzy classification is a multi-band image
having many bands as classes; each band explains the
pixels membership degrees to a class and in this way no
assignment mistake for mixed pixels is made.
Figure 13 illustrates a typical fuzzy classification result
(first image is shown in figure1; only two classes are
considered).
Membership degrees
to classe a
AL
0.04 0.95 1 |
o |0.22/0.46
and
Membership degrees
to glass b
Fig. 13: Multi-band image obtained as a result from a
fuzzy classification of the image in figure 1. Since the
classes are two the bands are two and each band
contains the membership degrees to one class. The sum
of membership degrees to class a and to class b is equal
to 1 for all the pixels.
In a classified image each band perform membership
degrees to one single class and so it describes the
presence of its class in the image.
For each pixel the sum of the membership degrees for all
the considered classes is equal to 1; the pure pixels have
one membership degree equal to 1 and all the other equal
to O while the mixed pixels have all the membership
degrees from O to 1.
This classification approach is very powerful for the mixed
pixels because it can treat them as really mixed and it
does not constrain them into a unique class; these
remarks suggests that fuzzy approach seems to be very
apt for snow detection on NOAA images.
Fuzzy approach is used for a new classification with all
the five recorded channels and having the threshold 22096
in order to deal with the classification of mixed pixels in a
different way.
The result of a fuzzy classification of a NOAA, image is a
multi-band image containing nine bands, each describing
the presence of one class.
The pure or almost-pure pixels, that in a traditional
classifications are assigned to a single right class, in a
fuzzy classification have one membership degree equal to
one or about one and all the other equal to zero or around
zero. The mixed pixels, that in a traditional classification
are wrongly assigned to one of the concerned classes
only or even to an extraneous class in the fuzzy
classification are assigned contemporarily to different
classes with different membership degrees.
The snow*green mixed pixels, that could be assigned in
odd ways like clouds, building, rice-field and so on, now
Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998 333