Full text: Technical Commission VII (B7)

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Destroved buildings 
Figure 4. Randomly selected objects present the variation of 
textural features for intact (top) and destroyed (bottom) 
buildings. 
Thus, using maximum and minimum of the angular textural 
features, we can exploit the presence of the textural orientation 
for building condition identification. The use of the average 
values of the angular features reduces this phenomenon. 
The selection of features is based on the analysis of the 
frequency distribution histograms (Figure 5). Consequently, the 
maximum value of the angular features for homogeneity 
(IDM max) is taken for the classification together with the 
DPC. 
   
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C BE 189 
  
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Figure 5. Frequency distribution histograms of the selected 
features. Red values correspond to destroyed buildings, 
blue values to intact buildings. 
3.4 Classification 
After selection of the most relevant features the building 
condition is calculated as a binary classification. There are 
many classification techniques implemented in the Open Source 
data mining software ‘Orange’. However, we are of the opinion 
that an optimally selected feature set is an indispensable 
condition for a successful classification. Unlike supervised 
techniques, the utilization of unsupervised classification does 
not require a suitable training data set which is difficult to adapt 
for all types of constructions. Reasoning from this assumption 
we use an unsupervised k-means clustering with the Euclidean 
distance in our study. The main rational is the simplicity of its 
implementation and its performance and applicability even on 
large data sets. 
For the clustering, the centres of cluster are initially chosen 
arbitrarily. Then every point is assigned to the cluster according 
to a similarity measurement, for example, distance. The centres 
are recomputed as centres of mass of their assigned points. The 
algorithm comes to an end, when there are no changes by the 
next iteration or when the number of changes is below a given 
threshold. 
4. RESULTS AND DISCUSSION 
The developed change detection algorithm is evaluated using 
remotely sensed image data acquired after the Yushu earthquake 
  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012 
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia 
on April 2010 and a related vector map containing 610 objects 
corresponding to the pre-event urban situation. After the feature 
extraction process and the analysis of the calculated features the 
building conditions are calculated by an unsupervised k-means 
clustering. The following confusion matrix shows the result of 
the experiment. 
  
Prediction 
CC 
Cl | 175 93 268 
C2 | 40 302 | 342 
215 | 395 | 610 
  
  
  
  
Correct 
class 
  
  
  
  
  
  
  
Table 2. Confusion matrix. C1 — intact buildings, 
C2 —destroyed buildings. 
The classification accuracy of 78% demonstrates the ability of 
this method to detect destroyed buildings. The independent 
features that depict the different types of the information are 
prerequisite to the sufficient result of the analysis. Furthermore, 
the application of the maximum value of the angular textural 
features instead of the generally used average values leads to a 
significant improvement. Considering the intact and damaged 
building separately, we observe that average values decreases 
feature performance and consequently the change detection 
accuracy. 
Detailed analysis of the results shows that the main 
classification errors are due to the image quality and 
rectification errors; for example, shadow from a building 
covering another one, not well defined destruction that cannot 
be recognized as a heterogeneity, and incorrect position of 
vector objects. 
The object-oriented GIS technology makes it possible to 
concentrate on the investigation of specified objects, thereby 
reducing the false alarms which are due to natural changes in 
the environment and not to buildings destruction. A subset of 
the generated damage map is shown in Figure 6. 
  
Figure 6. Change detection result by the proposed method. Red 
polygons indicate destroyed building, blue polygons intact 
buildings. 
5. SOFTWARE ENVIRONMENT 
The methodology is implemented using Open Source software 
components. The processing of vector and raster data sets 
including vector data selection and conversion, and data 
visualization is performed in the GIS GRASS (Geographic 
Resources Analysis Support System) environment (Neteler & 
Mitasova, 2004). It is currently the most popular system among 
   
   
	        
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