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be seen from publications of results by IGN-France
(Villet, Leconte, 1995).
3.2 Classification accuracy
No significant misclassifications may show up, unless
larger scale photographs are used. The analysis is
based on themes like roads, buildings, vegetation; for
each theme a separate misclassification matrix will be
created.
Here also some statistical testing procedures can be
applied.
a, : (main diagonal): correctly classified features
a, : (line elements - main diagonal): commission
errors, (features erroneously included into a class)
a, : (column elements - main diagonal) : omission
errors (features erroneously excluded from a class)
3.3 Completeness
Checking for completeness and classification goes
generally in parallel. The same strategy can be
applied: visual inspection according to object classes
using superimposition; however the results must be
presented separately.
4. QUALITY REPORTING
4.1 Introduction
Quality information collected through the various
processes need to be filtered and properly stored for
easy access and retrieval. There are a number of
unanswered questions about quality reporting :
how much information is required by the user ?
how to structure and store it ?
how to display and present it ?
Various attempts for modelling and storing quality
information of spatial data can be found in the
literature. (Faiz, Boursier, 1994)
4.2 Multi-level approach
The management of quality information is seen from
a different perspective by the supplier and by the
user of data. This may lead to separate quality
models, one which is mainly process-oriented (for the
supplier) and one which is data-oriented (for the
user). This implies that only part of the quality
information has to be transferred to the database.
The basic units for feature extraction are models
which will be dissolved in layers of a database;
quality information can best be organized in a
separate quality layer, using a multi-level approach
(figure 3).
15
DATABASE M.D.
PROJECT M.D.
6
LAYER M.D.
A
CLASS Attributes
A
OBJECT Attributes
(M.D. = Meta Data)
Figure 3: Quality information in a multi-level
approach.
Quality information is somewhat heterogeneous and
therefore has to be organized partly in the form of
meta-data and partly in the form of attributes.
This information is to be stored at various levels :
. Project : data source
camera type
photo scale
date of flight mission
determination of GCPs
method of AT
method of data collection
. Layer : lineage (data source,
method)
logical consistency (after editing)
positional accuracy (after field check)
classification accuracy (after field
check)
temporal accuracy
. Class: model-lay out and model-ID
control points
data from field check and field
completion
accuracy (estimated)
. Object : reliability
4.3 Visualization of quality information.
Quality information can be displayed, graphically or
numerically. The more quality attributes that are
added at the object level, the more quality analysis
can be performed based on quality criteria.
Typical questions which may be of interest for the
user are the following:
which models cover a certain area of interest
(defined by a window) and what is the photo scale
and the date of the flight mission ?
in which areas has field check/completion taken
place ?
what is the positional accuracy (in planimetry) of
a class of objects ?
This type of question can easily be answered through
queries.
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B4. Vienna 1996