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Towards spectral mathematical morphology

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Figure

Figure 1.1 – Fundamental structures and requirements of linear and nonlinear im- im-age processing approaches.
Figure 1.5 – Thesis organization flowchart within the context of image processing framework to be developed.
Figure 2.1 – Illustration of an electromagnetic wave traveling through space in the form of electric (E) and magnetic (H) fields, which are perpendicular to each other and the direction of propagation
Figure 2.2 – Principal divisions of the electromagnetic spectrum based on wavelength. Illustration is derived from [183].
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