techniques must be spectrally flexible and cover the whole
spectral range and not only a limited number of bands.
2.2 Data infrastructure
Remote sensing techniques have good potentials for mapping and
monitoring a number of water quality parameters. The reason that
these techniques are not yet used at their full potential can partly
be explained by poor information facilities and a poor
infrastructure for acquisition, processing, archiving and
distribution of remote sensing data. It is expected that
improvements of these facilities will lead to a considerable
increase in the use of remote sensing for water quality ap-
plications.
Recently a number of international (GEDN), European (GENIUS
and CEO) and national (e.g. in the Netherlands NEONET) studies
have been initiated to define and implement a remote sensing data
infrastructure. With respect to water quality applications,
evaluation of the scopes and the first results of the above
mentioned studies yields a number of conclusions:
1. Requirements of the end-users should form the starting point
for definition of the infrastructure for remotely sensed data.
2. Processing toolkits and data-assimilation techniques should
be integrated within the overall remote sensing data
Remote sensing data
Satellite
operator
infrastructure.
3. Besides technical aspects, organisational and
data-management aspects should get more attention (e.g. meta
information systems, help desks, facilities for coordination of
data-acquisition).
4. A balance has to be found between an infrastructure for
satellite data on the one hand and high resolution airborne
data on the other hand.
It appears that in terms of user requirements a distinction has to be
made between remote sensing experts who convert raw remote
sensing data into water quality information, and other kinds of
users who need water quality information (viz. directly useable
water quality information derived from remote sensing data).
There are also large differences in the wishes of project users in
research and advisory organisations and the so-called "end users"
(or water quality managers). Finally, when establishing a remote
sensing data infrastructure it is advisable to make a distinction
between non-real-time applications and real-time applications.
When designing a data infrastructure, image processing facilities
only need to be realised at a number of remote sensing expert
centres. From the remote sensing data infrastructure point of
view, for the non-remote sensing expert it will only be necessary
to ensure that the supplied remote sensing information is
compatible with the GIS which will be installed for each manager
“Applicat ion
Chlorophyll-a …
sour spill detection
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Data
infrastructure
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M eta inform ation)
in-situ
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archive
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pre-processing
processing
| post-processing
à du m 2
= Water managers |
Duck weed coverage
= es
level
*
level 2
Figure 1: Functional design of remote sensing data infrastructure for water quality applications
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B6. Vienna 1996
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