3 CONCLUSIONS
This paper presented a simple, low-cost and fast
technique of acquiring metric information via the use
of images. This method has the potential to substitute
classic methods of surveying, in the sense that results
in obtaining geometric information at minimum cost.
It extracts information from images using an
uncalibrated camera. Utilizing the principals of single
or multiview geometry, we are provided with data
without prior knowledge of the camera intrinsic
parameters, position or orientation and free of camera
synchronization or calibration.
The algorithms developed detect automatically
the geometry of an object and compute spatial data
with the requirement of minimum scenes constraints
and user input. The principals of homography were
utilized to relate image information with geographic
coordinates. Image segmentation techniques and
morphological image processing were combined to
achieve the required automation in geometric data
extraction. Depending on the combination of the
algorithms and the variation of input, three methods
were presented to compute the final geographic
coordinates. The framework created is considered a
flexible, automatic and accurate way of acquiring
spatial data with no use of special equipment.
However, the flexibility of the framework can be
further increased by developing the methodology to
include detection of random shape spatial objects.
As further work we would like to fully automate
the approach, the user hasn’t to do any intervention.
We envision an open, interoperable application
environment for spatial information processing,
empowering the user and providing the cadastre
office with new services. The services are fed with
spatial information input, which comes from the
uncalibrated digital cameras , as well as from the
cadastre data. We are currently investigating more
algorithms and technologies for extracting spatial
information form the images independent of the
geometry of the spatial object.
ACKNOWLEDGEMENTS
This work is supported by the project Citigeo
(Citizen-centered Photogrammetry Service Project
www.citigeo.ch). We would like to thank especially
Laurent Niggeler and Geoffrey Cornette from Etat de
Genève, Prof. Dimitri Konstantas and Vedran Vlajki
Switzerland for their support.
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