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The impact of these operations on performance and reliability varies
widely and it depends strongly on the overall process strategy.
The individual operations include the following.
1. Merging or. linking
Two or more related data sets can be merged into a single set or-
they can be linked mutually. Re-scanned image data or neighbouring
data (pixels or lines) can be merged, e.g., by averaging or by logi-
cal "AND" connection of the corresponding intensity values (1).
Merging implies a simple form of resampling (vide III.4.).
Linking is applied to a-priori data (key- and attributes), e.g., to
tie them with the image raster. This implies gridding of data (e.g.,
distinct lines and surfaces of morphometric and/or artificial fea-
tures) into a raster. Key-features can be linked with different
attributes by means of pointers or addresses. Examples are classes
of regions and networks (of chains and points). Such a classifica-
tion can serve for specifying the parameter values for subsequent
processes. A-priori data represent an autonomous data set, and
should therefore be preserved (in original form) for further uses.
2. Exclusion of regions
Anomalous and/or non-relevant regions should be excluded before
further processing. Examples of anomalous regions are areas covered
' by clouds, water, snow or other featureless (homogeneous) areas.
These can be manually delimited and excluded. Anomalous regions are
inside (internal) or along boundaries (external) of the area of
interest. The situation is more complicated when internal regions
are nested (i.e., lakes with islands with lakes, etc.).
3. Corrections
Corrections concern both geometric and pictorial (intensity), do-
mains. Geometric corrections can be applied for the camera (or sen-
sor) internal geometry and its external orientation (attitude).
Both can be differentiated further.
Intensity corrections concern issues such as reduction to mean le-
vel, amplitude scaling, compensation for image spread (inverse fil-
tering), CCD sensor characteristics, etc. The choice and application
of corrections requires utmost care.
4. Resampling
Correcting and resampling can be carried out separately or in combi-
nation. Resampling produces a new data set from an existing (old)
one. It usually involves both geometric and intensity domains. The
simplest geometric version is to form new pixels composed of 2, 4,
6.... old pixels (or of 4, 16, 36... old pixels) by averaging their
intensities. Another simple version is resampling merely in the
intensity domain, i.e., to produce 4 bit (i.e., 16) intensity levels
from initially 8 bit (i.e. 256) levels. |
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