Full text: CMRT09

In: Stilla U, Rottensteiner F, Paparoditis N (Eds) CMRT09. IAPRS, Vol. XXXVIII, Part 3/W4 — Paris, France, 3-4 September, 2009 
63 
a b 
Figure 4. Applying morphological opening operator with 
structuring element of size 5*5 to last pulse range images, a) the 
first dataset, b) the second dataset 
3.2 Evaluation of the Clustering Results 
The results of k-means and boost k-means clustering algorithms 
applied to features of our two datasets are shown in figure 5 and 
figure 6. In our experiments the cluster number is considered 
fixed and equal to 3 because our objects of interest in urban 
areas are bare earth (blue), vegetation (green) and buildings 
(red). For the creation of confusion (error) matrix, first, the 
ground truth (also known as reference clustering results) should 
be defined. For this, 3D vectors of these areas consist of 
vegetation and building areas are used. The areas of polygons in 
pixel unit (number of pixels in the vector polygons of objects) 
are used as the values of reference clusters in error matrices. 
The user values are computed by counting the number of truly 
clustered patterns inside the polygons. 
a b 
Figure 5. Overlay of reference vectors on clustering results of 
first dataset, a) result of k-means algorithm, b) result of boost k- 
means algorithm. 
a b 
Figure 6. Overlay of reference vectors on clustering results of 
second dataset, a) result of k-means algorithm, b) result of boost 
k-means algorithm. 
On the first view, both clustering algorithms provide reasonable 
classes of vegetation, buildings and ground but an accurate and 
numerical comparison will be carried out comparing the true 
object elements in the areas of interest. 
In Tables 1, 2, the confusion matrices contain the number of 
pixels assigned to each cluster in the results of k-means 
clustering is provided. The confusion matrices and NMI factor 
of the results of boost k-means algorithm are also given in 
Tables 3, 4. 
Table 1. Error matrix and quality factors of k-means clustering 
applied to first dataset. 
Error Matrix 
Reference Map 
Building 
Tree 
Ground 
C/3 
Building 
34077 
41 
975 
3 
C/3 
Tree 
205 
6844 
1178 
C4 
Ground 
7946 
2197 
65607 
Producer Accuracy 
80.7% 
75.4% 
96.8% 
Producer Accuracy 
97.1% 
83.2% 
86.6% 
Overal Accuracy 
89.5% 
K-factor 
0.801 
Table 2. Error matrix and quality factors of k-means clustering 
applied to second dataset. 
Error Matrix 
Reference Map 
Building Tree Ground 
Results 
Building 
Tree 
Ground 
58393 120 1858 
261 9808 1810 
10025 3809 68570 
Producer Accuracy 
85.0% 71.4% 94.9% 
Producer Accuracy 
96.7% 82.6% 83.2% 
Overal Accuracy 
88.4% 
K-factor 
0.798 
It should be noted that the confusion matrix is should be 
diagonal in the ideal case. According to the above confusion 
matrices and NMI factors and also visual interpretation, 
improvement in results of clustering using boosting method is 
obvious for our classes of interest in theses datasets. 
Table 3. Error matrix and quality factors of boost k-means 
clustering applied to first dataset. 
Error Matrix 
Reference Map 
Building Tree Ground 
Results 
Building 
Tree 
Ground 
39378 77 1895 
303 7757 1997 
2547 1248 63868 
Producer Accuracy 
93.2% 85.4% 94.2% 
Producer Accuracy 
95.2% 77.1% 94.4% 
Overal Accuracy 
93.2% 
K-factor 
0.876
	        
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