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Classification of hyperspectral images by tensor modeling and additive morphological decomposition

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Academic year: 2021

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Figure 1: Mathematical notation for a 2D multivariate image, I : E → F
Figure 2: Morphological transformations of a scalar (grey level) image. Original image (a) is a 342 × 342 pixels in 70-cm-resolution satellite image from the panchromatic band of Quickbird.
Table 1: Key notations used in the paper formulation. I is the original image and M a marker image
Table 2: Different morphological decompositions for an image I of size n 1 × n 2 × d in m levels.
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