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Figure 1. Multiscale kernel matrices for training samples of Bayview Park data set.
Figure 2.   with highest KA scores of different class pairs.
Figure 6. OA (a) and Kappa coefficient (b) of different methods
Figure 9. Classification maps of different methods on Bayview Park data set.

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