With the continuing increase in the number of images collected every day from different sensors, automated registration of multisensor/multispectral images has become a very important issue. This is particularly true when pre- and postevent image comparison is concerned: For this particular application, the requirement of obtaining the earliest possible postevent image imposes the use of data potentially showing strongly different characteristics with respect to the pre-event image. Strongly in-homogeneous image pairs require robust automatic registration techniques. Resolution-independent feature-based registration is naturally preferred over correlation-based registration where data are inhomogeneous. In this letter, we propose a mode-based feature matching scheme, formerly invented for computer vision application and adapted in this letter to pre- and postevent matching. We list a few weak points in the original technique when used for this particular application and illustrate how a significant improvement was obtained by modifying the algorithm. Three real cases of pre- and postevent feature matching on high resolution satellite images are shown and discussed.

Mode-Based Method for Matching of Pre- and Postevent Remotely Sensed Images

ALDRIGHI, MASSIMILIANO;DELL'ACQUA, FABIO
2009-01-01

Abstract

With the continuing increase in the number of images collected every day from different sensors, automated registration of multisensor/multispectral images has become a very important issue. This is particularly true when pre- and postevent image comparison is concerned: For this particular application, the requirement of obtaining the earliest possible postevent image imposes the use of data potentially showing strongly different characteristics with respect to the pre-event image. Strongly in-homogeneous image pairs require robust automatic registration techniques. Resolution-independent feature-based registration is naturally preferred over correlation-based registration where data are inhomogeneous. In this letter, we propose a mode-based feature matching scheme, formerly invented for computer vision application and adapted in this letter to pre- and postevent matching. We list a few weak points in the original technique when used for this particular application and illustrate how a significant improvement was obtained by modifying the algorithm. Three real cases of pre- and postevent feature matching on high resolution satellite images are shown and discussed.
2009
The Space Science category includes resources dealing with all areas of astronomy and astrophysics, which are concerned with celestial bodies and the observation and interpretation of radiation received in the vicinity of the Earth from the component parts of the universe. These resources deal with the physical properties of celestial bodies, such as luminosity, size, mass, density, temperature, chemical composition and their origin and evolution. Planetary science may also be included in this CC category.
Esperti anonimi
Inglese
Internazionale
STAMPA
6
2, April 2009
317
321
5
remote sensing; disaster management; registration; change detection
http://ieeexplore.ieee.org/document/4783061/
no
2
info:eu-repo/semantics/article
262
Aldrighi, Massimiliano; Dell'Acqua, Fabio
1 Contributo su Rivista::1.1 Articolo in rivista
none
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/146685
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