.. .. Spectre,

.. .. Sinogramme-de-shepp-logan-bruité,

. Fantôme-de-shepp-logan and . .. Tv, , p.83

. .. Temps-de-minimisation-de-la-fonctionnelle, 86 51 Reconstructions avec différents paramètres des algorithmes de minimisation, p.89

.. .. Fantôme-de-shepp-logan-texturé,

.. .. Sinogramme-du-fantôme-de-shepp-logan-texturé,

. .. Zoom-comparatif-sur-le-fantôme-de-shepp-logan-texturé, 92 58 Photo des motifs imprimés à l'encre

. .. Spectre-de-référence,

.. .. Sinogramme,

.. .. Échantillon-phalange,

.. .. Spectre-de-référence-de-la-phalange,

.. .. Sinogramme-de-la-phalange,

.. .. , 99 69 Reconstruction sur un sinogramme incomplet

, Images d'une acquisition hyperspectrale obtenue avec Image Viewer, p.104

, Images de test pour la séparation de sources

.. .. Sinogrammes,

.. .. Sinogramme,

, Images obtenues par séparation de sources

.. .. Échantillon-de-cinq-tubes-paramagnétiques,

.. .. Spectre-de-référence-de-l'échantillon-tam-tempo,

.. .. Sinogramme-de-l'échantillon-tam-tempo,

, Images reconstruites par séparation de sources

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