ccurrence
ential for
vith high
listic and
nal Baye-
1e overall
ikelihood
g training
| decision
propriate
H——+—+
0 l 2 km
Legend
Industrial Area
Docks
Residential Area
Other Areas /
Unclassified
rd
à
D d
Figure 9: Result of maximum-likelihood classification
Land-Use Class Reference Classified Number Producers Users
Totals Totals Correct Accuracy Accuracy
Residential Area 120 72 66 533.0.% 91.7%
Docks 24 38 16 66.7% 42.1%
Industrial Area 12 39 12 100.0% 30.7%
Other Areas 100 107 97 97.0% 90.7%
Overall Classification Accuracy = 74.6%
Table 10: Accuracy report for maximum-likelihood classification
Land-Use Class Reference Classified Number Producers Users
Totals Totals Correct Accuracy Accuracy
Residential Area 90 72 70 77.8 % 97.2%
Docks 34 38 30 88.2% 79.0%
Industrial Area 26 39 24 92.3% 61.5%
Other Areas 106 107 103 97.2% 96.3%
Overall Classification Accuracy = 88.7%
Table 11: Accuracy report for the neural network classification using region-based co-occurrence matrices
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