Full text: Proceedings, XXth congress (Part 4)

  
  
  
  
  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B4. Istanbul 2004 
5. RESULTS AND DISCUSSION 
5.1 Transferability test 
Table 4 lists the average results of the accuracy assessment of 
the four test sites in the two geographic regions coast and desert 
(classification of four base classes water, built-up, non built-up, 
and roads). The original classification results from the rule base 
which was developed for the specific image. The transferred 
classification is produced applying one rule base to the other 
test sites without making any changes and the adapted one Is 
with adjustments to the new test site. The original classification 
accuracies with 89% for Coast and Desert are higher than for 
the transferred and adapted classification results. The results 
show that adaptation of the rule base increases the accuracy to 
an acceptable level. 
Table 4: Accuracy Assessment of original, transferred, and 
adapted classification (four base classes) 
  
  
  
  
  
  
  
  
  
   
   
  
  
  
Coast Desert 
Origi- | Trans- | Adap- | Origi- | Trans- Adap 
nal ferred ted nal ferred | -ted 
Overall | 89% | 74% | 78% | 89% | 82% | 86% 
Accuracy » it 
Overall 
  
  
  
  
  
  
  
0.83 0.57 1.0.65 |. 0.6 027 | 0,56 
Kappa | ? ; > i 
  
  
[n addition to the classification of the four base classes, a more 
detailed classification was performed. Dependant on the image 
content, the class water for example was divided into sea, lake, 
and river and built-up into high- and low-density built-up. The 
detailed classifications comprise up to eight feature classes. 
Comparing the OA of the base and detailed classification, as 
expected, it is clear that the base classifications achieve equal or 
higher accuracies. 
Analysing individual feature classes indicates similar accuracies 
of the transferred and adapted classification for the class water. 
Therefore it can be assumed that water is transferable. 
Adaptation of the rule base results in an increase of the quality 
for the classes built-up and non built-up. There is no clear trend 
for the class roads. In the coast region, the adapted roads are 
worse than the transferred and vice versa for the desert region. 
The dependency of the image characteristics can be clarified 
especially with roads: Broad, paved roads are more easy to 
extract than. narrow, dirt tracks which are built from the 
surrounding material. 
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Figure 3: left: IRS image Jijel, centre: transferred, right: adapted 
    
classification result 
Figure 3 shows a classification example of the transferability 
test. On the left hand side is a subset from the IRS image of the 
test site Jijel. In the center the classification result from the 
transferred rule base from the test site Mostaganem is displayed 
and to the right the adapted result. The transferred result 
contains only one water class (dark blue). The sea and one lake 
are correctly classified as water, most of the river is not 
classified. After adapting the rule base both lakes (bright blue) 
are correctly classified by taking into account context 
information (neighborhood to other than water classes) and 
most of the river is extracted. Classified built-up areas are 
displayed in red, non built-up in green, and roads in yellow. 
Table 5: Accuracy Assessment transfer of the rule base from 
Mostaganem to Jijel (four base classes) 
  
  
Mostagenam > Jijel 
  
  
  
  
[Original | S 
> l'ransferred | Adapted 
Jijel 
Overall Accuracy | 87 % 80 % 87 9^ 
Overall Kappa 0.8 0.69 0.8 
  
  
  
  
  
  
The accuracy assessment results from the transfer of the rule 
base from Mostaganem to Jijel (four base classes) are listed in 
Table 5. The OA, as well as the OK of the transferred 
classification, are lower than the original classification of Jijel 
and the adapted result. By adapting the rule base an 
improvement can be achieved which produces an OA and OK 
equal to the original classification. 
5.2 Base rule set 
Similar to the transferability test (section 4.1), three accuracy 
assessment steps were performed for each image. The first is the 
accuracy of the transferred base rule set, the second is from the 
adapted. rule set and the third is the accuracy from the 
classification with added rules to the base rule set. Figure 4 is 
an example of the calculated accuracies and it reports the OK 
for the four test sites, in addition to the accuracy of the original, 
individual classifications (four base classes) For example, 
figure 4 shows that the OK for Jijel is 0.61 and it increases to 
reach 0.65 and 0.7 after the adapting and addition phases, 
respectively. The figure also shows that the average OK of the 
transferred rule set is 0.67, 0.69 for the adapted rule sets and 
0.71 for the classifications with the added rules. In spite of the 
higher accuracies achieved after adding new rules, it still falls 
below the average OK (0.83) for the original classifications. 
The OA shows similar results (Figure 5). The average OA for 
the transferred base rules set is 79% and it increases to 82% 
after adding new rules. Again, this is less then the average 
accuracy (89%) of the original classifications. 
The average Kappa values of the coast classification results for 
individual feature classes are presented in figure 6. Except for 
the class water, the original Kappa values have the best 
accuracy. For water the accuracies of the transferred, adapted, 
and original classifications are nearly the same. 'The accuracies 
of the transferred classifications of the classes non built-up and 
built-up are considerable lower than the original Kappa values 
but with an average of 0.7 and 0.55, respectively, they are 
higher than those of roads. This linear feature class delivers the 
worst results with a maximum Kappa value of 0.39 for the 
transferred and added rules classification but the individual 
classification are not much higher with a Kappa of 0.42. Roads 
are quite difficult to extract because of their special geometry 
(narrow, elongated) and the image resolution of Sm is not 
sufficient to achieve better results with object-based 
classification. 
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