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 
conjugate gradient seems to solve this problem. Moreover, 
MLP has smaller memory requirements for the classification 
and has better generalization than the RBF. 
  
  
  
  
  
  
  
b) Classified image 
  
  
  
Figure 8. Image result of the developed method 
From the two neural network models examined MLP works 
more reliably than RBF for oil spill detection. The mean 
performance for all RBF topologies examined was 77.62% 
while for MPL 98.98%. Several topologies were examined 
using the constructive method. The topology best suited for the 
classification procedure was the MLP 4:2:1 according to 
specific inputs. Classification accuracy was 99.433% for the 
above topology. The high performance of neural networks as 
classifiers was confirmed by producing accuracy 99,29 — 
99,60% when applied to other images, which contain oil spills 
and are captured under the same wind conditions. For RBF, the 
best performance achieved was 99.08% with 4:4:2 topology but 
the more reliable topology was topology with 3 inputs (3:3:2, 
3:4:2, 3:5:2) with a mean performance of 98.37%. 
Further examination is needed using images containing 
different sea states and different types of oils spills. Moreover, 
the performance of other neural network types like Support 
Vector Machines (SVM) and Recurrent networks (like 
Hopfield) need to be investigated. 
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