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III. OBJECT DETECTION
An UXO risk for a region of interest is derived from
various indicators of combat activities on historical aerial
images. These could be destroyed buildings, anti-aircraft
artillery positions, trenches or bomb craters; the latter ones
are by far the most numerous and simultaneously the most
difficult to reliably identify on aerial images, as they can
easily be confused with other small round objects such as
trees [3].
The development of strategies for automatic detection of
such combat indicators is scheduled for the current year.
We are planning to adapt state of the art machine learning
approaches to the problem; we hope to be able to exploit the
fact that typically a time series of registered aerial images
is available for the region of interest. As the task at hand
is a critical one, a human expert will always be required
to validate and refine the results. We will thus, just as for
the registration problem, aid the user with an interactive
visualization component for parameter exploration.
IV. IMPLEMENTATION
In order to maximize both the benefit to our industrial
project partner and the usage and testing of our methods,
we have been developing software tools that blend in to
their daily workflow, namely in the form of plug-ins for
their preferred GIS software. The first working prototype
of the registration component was delivered in February
2017 and tested in both the German and Austrian branch
of the Luftbilddatenbank GmbH. Apart from minor bugs
and usability issues, the overall feedback was positive and
encouraging.
REFERENCES
[1] M. P. Heinrich, M. Jenkinson, M. Bhushan, T. Matin, F. V. Gleeson,
S. M. Brady, and J. A. Schnabel, “Mind: Modality independent neigh-
bourhood descriptor for multi-modal deformable registration,”Medical
Image Analysis, vol. 16, no. 7, pp. 1423–1435, 2012.
[2] D. G. Lowe, “Distinctive image features from scale-invariant key-
points,” Int. J. Comput. Vision, vol. 60, no. 2, pp. 91–110, Nov. 2004.
[3] S. Merler, C. Furlanello, and G. Jurman, “Machine learning on historic
airphotographs for mapping riskofunexplodedbombs,” inProceedings
of the13th InternationalConferenceon ImageAnalysisandProcessing,
ser. ICIAP’05. Berlin, Heidelberg: Springer-Verlag, 2005, pp. 735–
742.
[4] V. Murino, U. Castellani, a. Etrari, and a. Fusiello, “Registration of very
time-distant aerial images,” Proceedings. International Conference on
Image Processing, vol. 3, pp. 989–992, 2002.
[5] S. Nagarajan and T. Schenk, “Feature-based registration of historical
aerial images by area minimization,” ISPRSJournalofPhotogrammetry
and Remote Sensing, vol. 116, pp. 15–23, 2016.
110
Proceedings of the OAGM&ARW Joint Workshop
Vision, Automation and Robotics
- Titel
- Proceedings of the OAGM&ARW Joint Workshop
- Untertitel
- Vision, Automation and Robotics
- Autoren
- Peter M. Roth
- Markus Vincze
- Wilfried Kubinger
- Andreas MĂĽller
- Bernhard Blaschitz
- Svorad Stolc
- Verlag
- Verlag der Technischen Universität Graz
- Ort
- Wien
- Datum
- 2017
- Sprache
- englisch
- Lizenz
- CC BY 4.0
- ISBN
- 978-3-85125-524-9
- Abmessungen
- 21.0 x 29.7 cm
- Seiten
- 188
- Schlagwörter
- Tagungsband
- Kategorien
- International
- Tagungsbände