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INTEGRATION OF GEOSCIENTIFIC DATA SETS AND THE GERMAN DIGITAL MAP
USING A MATCHING APPROACH
G. v. Gósseln, M. Sester
Institute of Cartography and Geoinformatics, University of Hannover, Appelstr. 9a, 30167 Hannover, Germany —
(guido.vongoesseln, monika.sester} @ikg.uni-hannover.de
Commission IV, WG IV/7
KEY WORDS: Cartography, GIS, Geology, Soil, Change Detection, Integration
ABSTRACT:
The integration of various data sets can be the answer for geoscientific questions on the one hand, but a disadvantage on the other
hand, due to the differences in representation and content. Although geoscientific data sets typically refer to the same physical data
source — the earth surface — and therefore also relate to topographic objects, these data sets differ in geometry, accuracy and actuality
in most cases. In former times differences between analogue maps were not as apparent as today when different data sets are overlaid
in a modern GIS-application. Integrating different data sets — in our case topographic data and geoscientific data — allows for a
consistent representation and thus for the propagation of updates from one data set to the other. This problem leads to three steps,
namely harmonisation, change detection and updating which are necessary to ensure consistency, but hardly practicable when
performed manually.
For a harmonization of data sets of different origin, firstly the revelation of semantic differences is required; to this end, the object
catalogues are compared and semantically corresponding objects are identified. In this step, also the cardinality of possible
matchings between the objects in the different representations is determined (l:l, En, n:m). The identification of geometric
differences between the one-layered geoscientific and the multi-layered German digital map (ATKIS) will be fulfilled in the next
step. In order to identify corresponding object-pairs between the data sets, different criteria like area, shape and position are used.
Due to different levels of generalisation the detection of matches between groups of objects and single objects is implemented.
Corresponding objects which have been selected through semantic and geometric integration are investigated for change detection
using intersection methods.
The geometric differences which are visible as discrepancies in position, scale and size due to simple superimposition will lead to
unsatisfying results. Therefore, the iterative closest point (ICP) algorithm is implemented to achieve the best fit between the objects.
The evaluated results can be classified into three types, of which two types can be handled automatically, and for one type an
automatic proposal is given by the software. This leads to a significant reduction of time and resources because the approach reduces
the objects to be investigated manually to only those situations where manual intervention is inescapable.
The paper gives an overview of the problem and focuses on the geometric integration, especially on the matching of groups of
objects and the adaptation of the object's shape.
I. INTRODUCTION
Geoscientific and environmental problems often require the
usage of different data sources to achieve a satisfying result.
The combination of different data sources offers the advantage
to benefit from their respective merits. In former times these
data sets were used in only analogue representations, but today
the main part of geoscientific data sets are available as digital
data sets.
The data sets which have been acquired for geoscientific
purposes rely on the same source, the earth surface.
Despite this fact they show significant differences due to
different acquisition methods, formats and thematic focus,
different sensors, level of generalisation, and even different
interpretation of a human operator. Sometimes new acquisition
is therefore needed to create a single homogenous data set.
Another problem which occurs while working with different
data sets is the problem of temporal inconsistency:
Even if the data sets originally are related to the same objects,
different update cycles in the different thematic data sets lead to
significant discrepancies. Observing this problem it is obvious
that harmonisation, change detection and updating of different
data sets is necessary to ensure consistency, but hardly
practicable when performed manually.
Professionals from different geoscientific domains in Germany
take advantage of the geological (GK) and the soil-science map
(BK). These maps have a very strong thematic focus, but they
do not contain the amount of topographic content, which is
mandatory for different tasks to be solved. Therefore these data
sets are combined with the german digital topographic data set
(ATKIS). Unfortunately these data sets have been digitized
from analogue maps and they differ in acquisition time,
representation type and temporal consistency. which makes
integration hardly possible.
In a project of the German Ministry of: Education and Research
under the headline “GEOTECHNOLOGIEN™, a research group
at the University of Hannover, consisting of three institutes
from surveying and computer science, is dealing with the
problem of data integration, applied to data sets from
topography, geology and soil science. The project deals with
different aspects of data integration, namely integration of
different vector data sets, integration of vector and raster data,
as well as providing an underlying data structure in terms of a
federated data base, allowing a separate, autonomous storage of
the data, however linked and integrated by adapted
reconciliation functions for analysis and queries on the different
data sets (Sester et al., 2003).
This paper focuses on the work of the Institute of Cartography
and Geoinformatics (ikg), namely the integration of vector data.
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