BUILDING DAMAGE DETECTION FROM POST-EARTHQUAKE
AERIAL IMAGES USING WATERSHED SEGMENTATION IN GOLCUK, TURKEY
E. Sumer ?, M. Turker b
? Baskent University, Department of Computer Engineering, Eskisehir Road 2
0.km 06530 Ankara, Turkey —
esumer@baskent.edu.tr
^ Middle East Technical University, Graduate School of Natural and Applied Sciences,
Geodetic and Geographic
Information Technologies, 06531, Ankara, Turkey — mturker(cümetu.edu.tr
Commission VII, WG VII/5
KEY WORDS: Remote Sensing, Earthquakes, Detection, Segmentation, Aerial, Edge, Urba
ABSTRACT:
The collapsed buildings due to earthquake were detected fro
objective was to detect the collapsed buildings based on the
stored in a GIS as vector polygons. The building polygons were utilized to
n area of Golcuk. The shadows cast by the buildings were detected using the watershed
dges of the buildings were identified and a buffer zone was generated for each building
within the buffer zone were selected from both inside and outside the
shadow regions were detected using a watershed segmentation algorithm.
adow producing edges of the buildings and the corresponding shadows
pixels. Of the 284 buildings analyzed, 229 were correctly labeled as collapsed or un-collapsed
The results prove that the collapsed buildings caused by the earthquake can be successfully
approach was implemented in a selected urba
segmentation algorithm. The shadow casting e
polygon along these edges. Then, the initial points falling
building polygons to start the watershed segmentation. The
This was followed by measuring the agreement between the sh
based on the percentage of the shadow
providing an overall accuracy of 80%.
detected from post-event aerial images.
1. INTRODUCTION
An earthquake, an unpredictable and unpreventable event, is
regarded as one of the most destructive natural disasters on
earth. On 17 August 1999, the urban areas of Golcuk, Yalova,
[zmit and Istanbul were significantly damaged by an
earthquake. It is estimated that 50,000 buildings were heavily
damaged, over 15,000 people died and about 32,000 people
were injured in this dreadful event. The epicenter of the
earthquake was 40.70° N, 29.91° E (USGS), near the city of
Izmit. The magnitude and the depth were 7.4 and 20 km
respectively. The region struck by the earthquake,
accommodates nearly 20% of the total population and is the
most industrialized zone of Turkey.
The extent of the damage caused by this catastrophic event
needs to be assessed rapidly in order to reduce its effects by
setting the corresponding agencies in motion. This can be
efficiently performed using remote sensing technology that
provides up-to-date information about the earth surface features.
Change detection approaches can be used to detect the
earthquake-induced changes using the pre- and post-quake aerial
photographs or satellite images by comparing and analyzing
them. There are also several other methods for collecting
information on damage due to earthquakes such as field surveys,
aerial television imagery, and satellite imagery (Hasegawa et al.,
1999).
The objective of this study is to determine the collapsed
buildings in a selected urban area of Golcuk using a watershed
segmentation algorithm. A shadow-based damage detection
method was proposed. The implementation of the approach was
n, Building.
m post-event aerial images using watershed segmentation algorithm. The
analysis of the cast shadows. The building boundaries were available and
perform assessments in a building specific manner. The
carried out using MATLAB 6.5 which is a high-performance
language for technical computing.
2. PREVIOUS STUDIES
In many applications of damage assessment and building
detection, the aerial photography is widely used due to its
advantages such as improved vantage point, permanent
recording, broadened spectral sensitivity, the increased spatial
resolution, and geometric fidelity. One of the frequently used
applications of aerial photography is the detection of the
buildings from their shadows. Irvin ef al., (1989) states that the
shadows are usually among the darkest areas in images and their
extraction can be feasible using image processing techniques.
They developed several methods to estimate the grouping of
related structures together with the shape, verification and
height of individual structures. In each method, the main
approach used was the relation between structures and their cast
shadows. Another study concerning building shadows was
realized by Huertas ef a/., (1988). They used building shadows
to estimate the building heights. In addition, the shadows cast by
the buildings were utilized in verification of the buildings. Their
method was comprised of four steps including line and corner
detection, labeling of the corners based on shadows, tracing of
object boundaries, and finally the verification of hypotheses.
Ishii et al, (2002) proposed a method, containing two cases, to
detect the damaged areas from aerial photographs. In the first
case, color and edge information were used to detect the
damaged areas from a post-quake aerial photograph. Combining
the color information with the edge information, the
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