Mixed pixels problems and multisource classification
for snow layer detection
Alessandra Colombo
"P.h.D attendent at Politecnico di Milano, Dip. IIAR sez. Rilevamento
P.za Leonardo da Vinci, 32 -20133 Milano ITALY
e-mail: alessandra.colombo@polimi.it
ISPRS Commission VII Symposium, Working Group 4
KEY WORDS:
Remote-Sensing, image analysis, snow monitoring, database, DEM, Expert-System, mixed pixel, classification, Fuzzy
ABSTRACT
Monitoring the thawing of snow layer in spring is very useful for estimating its water equivalent and making good use of it.
Remote sensing classic techniques and low-cost images have allowed a fairly efficient approach to this problems since '
the eighties. All the main problems of the classical approach are connected with the high number of mixed pixels in the
images, since classical approach is completely unsuited to analyse mixed pixels. Nowadays the fuzzy approach allows to
define degrees of membership to classes so that one can treat mixed pixels as they really are. Then a multisource
classification processes membership degrees and DEM information jointly in order to localise the blanket of snow in an
enough controlled and exact way.
1.INTRODUCTION
An efficient methodology for detecting snow layer
borderline on large mountain areas is locating it by remote
sensing images since snow blanket and snow-uncovered
soil have brightly different spectral signatures. The
borderline between uncovered-soil and snow is usually
non continuos and irregular and so, many pixels in a
remote sensing image are mixed, each of them recording
the reflected-emitted radiation from both snow and snow-
free soil. In springtime blanket of snow is surrounded
principally by green and so we consider mixed pixels
along borderline made up only by snow and green.
Traditional classifiers assign each pixel to a single class,
or at least to the unclassified-pixel class, depending on
classifier's characteristic rules.
In this way part of the mixed pixels radiometric value gets
lost and any mixed pixel after the classification is
considered as a non-mixed one.
A fuzzy approach, on the contrary, allows to define a
membership degree to each class, and in this way all the
pixels are actually classified as mixed and no information
is lost.
Many different elements can be considered later to assign
the pixels to a precise class if this information is required
for further analysis. .
A multisource classifier can take action after the fuzzy
classification so different elements can be used to
evaluate the former mixed pixels nature; so they can be
classed consistently with a non radiometric information
too.
In the case of snow layer borderline a multisource
classification following a fuzzy classification, considers
topographic elements mountainside height, slope and
aspect. This is our procedure to decide which class the
mixed pixels should be assigned to, and so identify the
snow borderline in an enough controlled and reliable way.
2. SNOW LAYER MONITORING SYSTEM
Monitoring systems require many repeated observations
and so the choice of the image type is very important in
order to satisfy the image-management needs
(radiometric resolution and spectral resolution), the time
resolution and the costs. Very good compromises are the
NOAA images because they survey the same earth area
several times each days (from three to six times a day),
their radiometric resolution and their spectral resolution
are quite suitable and, finally, they are low cost, on the
contrary their geometrical resolution is not high (around
1.1 km x 1.1 km at nadir position) and so they contain
many mixed pixels, particularly snow free soil-to snow
borderline is recorded in mixed pixels as the following
image shows.
no-snow
Fig. 1 Along the snow-to snow free soil borderline there
are many mixed pixels.
328 Intemational Archives of Photogrammetry and Remote Sensing. Vol. XXXII, Part 7, Budapest, 1998
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