DETECTION AND RECOGNITION OF CHANGES IN BUILDING GEOMETRY
DERIVED FROM MULTITEMPORAL LASERSCANNING DATA
T. Vógtle, E. Steinle
IPF, University of Karlsruhe, EnglerstraBe 7, 76128 Karlsruhe, Germany — { voegtle,steinle } @ipf.uni-karlsruhe.de
KEY WORDS: Change detection, Urban, Laser scanning, DEM/DTM, Segmentation, Comparison, Classification, Recognition
ABSTRACT:
The work presented is part of a project that aims at change detection in urban areas after strong earthquakes. Detection and
classification of these changes are used to recognise building damages as an important information input for a disaster management
system based on GIS techniques. Airborne laser scanning data was chosen for this approach, because of specific advantages like data
acquisition of large areas in relatively short time or extensive independence on weather and lighting conditions. Modifications are
detected by comparison of digital surface models (DSMs) acquired at two different dates (t; and t;). An analysis of solely a
differential DSM (DSM(t,) - DSM(t,)) would lead to ambiguities, e.g. attachments or modifications of buildings could not be related
to the affected buildings. Therefore, firstly a segmentation procedure based on a region growing algorithm is used to generate
separate 3D objects. For each segment object-oriented features like border gradients or shape are extracted to classify into ‘building’,
‘vegetation’ or ‘terrain’. After elimination of all non-building objects. the correspondence between the objects of the two laser
scanning data sets has to be determined. At this step, new and teared-off buildings are extracted. The remaining 3D objects have to
be controlled in terms of significant elevation changes and thus classified into ‘not-altered’, ‘added-on’ or ‘reduced’. First results in
test area 'Karlsruhe' (approx. 8km x 2km) will be presented.
KURZFASSUNG:
In diesem Artikel werden Teile der Arbeit eines Projekts dargestellt, das sich mit der Ánderungserkennung in stadtischen Bereichen
nach schweren Erdbeben beschäftigt. Das Ziel des Projekts ist die Entdeckung und Interpretation von Änderungen an Bauwerken um
Gebäudeschäden zu finden, da sie wichtige Informationen für ein GIS-basiertes Katastrophenmanagementsystem darstellen. Im
Projekt werden Daten des flugzeuggetragenen Laser Scannings benutzt, da diese Sensoren bestimmte Vorteile aufweisen, z.B.
schnelle Informationsgewinnung über große Bereiche oder weitestgehende Witterungsunabhängikeit. Die eigentliche
Anderungserkennung basiert auf dem Vergleich zweier digitaler Oberflichenmodelle (DOM), die zu verschiedenen Zeitpunkten
erfasst wurden. Würde man ein reines Differenzen-DOM untersuchen, dann käme es zu Mehrdeutigkeiten, es kônnten z.B. Anbauten
oder Veränderungen an einem Gebäude nicht immer zu diesem zugeordnet werden. Aus diesem Grund werden zuerst 3D-Objekte mit
Hilfe eines region-growing basierten Segmentationsverfahren extrahiert. Für jedes Segment werden Merkmale wie
Randgradientencharakteristiken oder Formparameter bestimmt, aufgrund denen das Objekt den Klassen 'Gebüude', 'Vegetation'
oder "Gelüánde' zugeordnet wird. Danach werden die zu beiden Zeitpunkten aufgefundenen Gebäude auf ihre Überlagerung hin
untersucht. Bei diesem Schritt werden Neubauten oder abgerissene Gebäude entdeckt. Die verbliebenen Objekte werden nun
hinsichtlich signifikanter Höhenänderungen analysiert und dabei den Klassen 'unverándert' , ’aufgestockt” oder ’niedriger geworden’
zugewiesen. Erste Ergebnisse für das Testgebiet ’Karlsruhe’ (ungefähr 8km x 2km) werden gezeigt.
time restrictions and for large areas has to be found. Airborne
laser scanning - which has maturated to an operational system
1. INTRODUCTION
In this paper a method for change detection in urban areas is
presented. It is focussed on changes of buildings which may be
caused by planned, man-made modifications like rebuilding,
extension, tear-off etc. or by natural disasters like strong
earthquakes. To detect the latter ones is the main objective of a
special project of the Collaborative Research Center 461 'strong
earthquakes' (CRC 461, 2004).
Building damages are one of the most important input
information for a disaster management tool to optimise rescue
activities. Therefore. a system for data acquisition under hard
in the last years - was favoured for this special task. It provides
3D coordinates for every measuring point by recording slant
range to the reflecting surface point (laser sensor) and spatial
orientation of the sensor (GPS / INS). The advantages of this
system are high point density, high elevation accuracy, fast data
acquisition of large areas, automatic determination of the height
values, high independence of illumination conditions and
robustness due to most weather conditions. Therefore, the
system can be used also during night time and poor weather
conditions which is a very important aspect for disaster
management. Fortunately, there is no influence of shadows on
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