/ area
Yosuke Ito
Input layer
Coherence set
Figure 7: Structure of competitive neural network
The LVQ2.1 behaves effectively when the PDFs are overlapped each other. In both procedures, the initial learning rate
is set to 0.03 and the weight vectors are repeatedly updated 40000 times. The extraction method exposes the coherence
images with unknown category to the trained NN and classifies it as the category to which the winner neuron belongs.
To find out the effectiveness of the multi-source coherence images for extracting the damaged regions, we defined two
types of coherence sets: C, = {EC1-3, EC1-4, EC2-3, EC2-4}; C, = Cy + {JC1-2}. The number of coherence images
corresponds to the number of input neurons N.
In the experiments, the training and test data (table 3) were chosen from the area covered by either the burned or the
completely collapsed structures based on the hazard surveying map in figure 4. The training data of w; and v» are 5 x 5
and 10 x 10 resampled scenes from the test data, respectively. The LVQ method was compared with the maximum
likelihood (ML) method. All classification methods employed the same training and test data for a fair comparison.
5 RESULTS AND DISCUSSION
Extraction results of damaged regions were assessed with regard to an kappa coefficient (Richards, 1993) and distribution
of the extracted regions in the classified image. Confusion matrix A — [a4], $4, = 1,..., L is produced for each
classification result where a;; denotes the number of pixels classified w; into w j. The kappa coefficient (x) is defined by
L L
A++ D Okk — 3, Gk Ok
iran k=1 k1
K = ; 7 (4)
ay — = AR+O+k
LI L L
where ayy = N° N^ aij, Qi = > jj and aij = S aij.
113-1 jg i=1
Figure 8 shows the comparisons between C, and C» for the LVQ and ML methods in term of & where the number of
neurons M in the competitive layer varies from 2 to 20 to find out an optimum NN. For C, and C» when Ms are equal
to 4 and 6, the NNs produce the maximum accuracy. The changes of & with the number of neurons M are small for Ci
since the distributions of w; and w» in the coherence images of C, are similar as shown in figure 6. However, & for C» is
sensitive to the number of neurons M since the distributions of JC1-2 and the other ERS coherence images are different.
The & of the LVQ using the optimum NN is higher than that of the ML for both coherence sets.
To assess the classification accuracy for all combinations about the classifiers and the coherence sets, the kappa coefficient
(k) is shown in table 4. The x is improved 23% (0.035) in the LVQ and 34% (0.039) in the ML methods by adding JC1-2.
Itis also improved 3196 (0.035) in C, and 2096 (0.031) in C; by applying the LVQ method. Table 5 shows the confusion
matrices using C5. The LVQ method produces better results than the ML method from the view point of balance of the
number of the correctly classified pixels, that is, a4; of the LVQ decreases 418 and a»» increases 2198 compared with the
International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part Bl. Amsterdam 2000. 161