Full text: Proceedings, XXth congress (Part 7)

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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
discrimination of the damaged areas from the non-damaged 
could be done successfully. In the second step, aerial 
photographs of the same area taken before and after the 
earthquake were available. They matched the two images by 
using the affine transform and also by hand. Then, the colors of 
the corresponding pixels in each image were checked. Thus, the 
areas having color differences were examined. As a 
consequence, the two-case method were said to be fairly good 
in determining the damaged areas. A similar study was 
conducted by Mitomi er a/.,(2000) who detected the damaged 
buildings by processing the aerial television images taken after 
the 1999 Kocaeli, Turkey and Chi-Chi, Taiwan earthquakes. 
The method was composed of defining the characteristics of 
damage to wooden buildings based on hue, saturation, 
brightness and the edge elements. Firstly, the damaged and non- 
damaged pixels were classified. Then, texture analysis was 
carried out and the damaged buildings were identified. 
A near-real time earthquake damage assessment using the 
integration of GIS and remote sensing was performed by 
Gamba ef al., (1998). Their approach was comprised of two 
phases. In the first phase, GIS side of the study was performed 
via collecting and analyzing data about buildings and 
infrastructures. In the second phase, the system receives near- 
real time imagery of the suffered area to perform change 
detection through shape analysis and perceptual grouping using 
the pre and post-event aerial images. 
Turker and San (2003) used pre- and post-event SPOT HRV 
images to detect the Izmit earthquake induced changes. The 
change areas were detected by subtracting the near-infrared 
channel of the merged pre-event image from that of the post- 
event image. The overall accuracy for the change areas were 
found to be 83%. 
In a recent study, Turker and Cetinkaya (in press), detected the 
collapsed buildings caused by the 1999 Izmit, Turkey 
earthquake using digital elevation models (DEMSs) created from 
the aerial photographs taken before (1994) and after (1999) the 
earthquake. The DEMs created from two epochs were 
differenced and the difference DEM was analyzed on a 
building-by-building basis for detecting the collapsed buildings. 
The producer's accuracy for collapsed buildings was computed 
as 84%. Further, Turker and San (in press) utilized the cast 
shadows to detect the collapsed buildings due to Izmit, Turkey 
earthquake. The available vector building boundaries were used 
to match the shadow casting edges of the buildings with their 
corresponding shadows and to perform analysis in a building 
specific manner. Of the 80 collapsed buildings, 74 were 
detected correctly, providing 92.5096 producer's accuracy. 
In the present case the earthquake-damaged buildings are 
detected from post-event aerial images using watershed 
segmentation. This segmentation is based on the concepts of 
watersheds and catchment basins, which are well known in 
topography. In this approach, a gradient image can be regarded 
as a topographic surface where the gray-levels of the gradient 
image represent altitudes. (Figure 1). Therefore, the edges in the 
image having high brightness values are considered as 
watershed lines while the interior regions of the image having 
low brightness values can be considered as catchment basins 
(Sonka et al., 1998). The first step of the segmentation is finding 
the minima (catchment basin) and piercing of it. Then, whole 
relief is immersed into the water that causes the water flooding 
into the areas close to the piercing points. As the relief goes 
deeper in the water, some flooded areas tend to merge. In order 
to prevent this, infinitely tall dams are placed along the 
643 
watershed lines. At the end, the resulting group of dams defines 
the watersheds of the image (Shafarenko er al., 1997). Vincent 
ef al,(1991) developed a fast and flexible algorithm for 
computing watersheds in digital grayscale images. The 
algorithm is based on an analogy of an immersion process. In 
this algorithm, the flooding of the water in the image is 
efficiently simulated using a queue of pixels. They applied the 
algorithm in several fields with regard to picture segmentation 
including MR imagery and digital elevation models. 
  
Tm eel = oe Watersheds 
_ - 
  
  
—-—---=> Catchment 
A [ 2-7 basins 
| 
—— 9 
  
  
  
  
  
(b) 
  
Figure 1. Watershed segmentation in one dimension: (a) gray- 
level profile of the image data; (b) watershed segmentation — 
local minima of gray level (altitude) yield catchment basins; 
local minima define the watershed lines. 
3. STUDY AREA AND DATA 
3.1 Study Area 
A selected urban area of the city of Golcuk was used as the study 
area (Figure 2). A post-quake panchromatic aerial photograph 
(Im resolution) of the region was obtained from General 
Command of Mapping of Turkey. The study area consists of 284 
rectangular shaped buildings. Of the 284 buildings, 79 were 
collapsed and the remaining 205 buildings were un-collapsed. 
The vector building boundaries were available from a previous 
study conducted by San (2002) in our department. The data 
contains for each building the Cartesian coordinates of the edge 
points. 
  
Figure 2. Study Area 
 
	        
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