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Classification en espaces fonctionnels utilisant la norme BV avec applications aux images ophtalmologiques et à la complexité du trafic aérien

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Academic year: 2021

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Figure

Figure 1.1: The function in the figure (b) has a much smaller Total Variation than it has in the figure (a).
Figure 1.3: Computation of BV norm along the centerlines of one vessel
Figure 2.2: Choosing the optimal separating hyperplane.
Figure 2.4: Input and feature spaces for the non-linearly separable case
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