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O. Le, le score perceptuel relatif à la cible TPS (courbes en rouge), le score perceptuel relatif aux interférences IPS (courbes en vert) et le score perceptuel relatifs aux artéfacts APS (courbes en mauve) des algorithmes BSS-l 1 (courbes continues) et ICA (courbes en tirets) : évaluation sur la base de données Theo-RI-studio, p.115

O. Le, le score perceptuel relatif à la cible TPS (courbes en rouge), le score perceptuel relatif aux interférences IPS (courbes en vert) et le score perceptuel relatifs aux artéfacts APS (courbes en mauve) de l'algorithme BSS-l p -param (courbes continues) en comparaison avec BSS-l 1 (courbes en tirets) : évaluation sur la base de données Theo-RI-studio, p.118

. La-moyenne-de-la-norme, 1 au cours des itérations de l'algorithme BF_fixed[5°]_BS+BSS-l 1 pour différentes tailles du réseau de capteurs : évaluation sur la base de données Theo-RI-studio, p.144

.. Le-rapport-source-À-artéfacts-sar-de-bf_fixed, _BS+BSS-l 1 au cours des fenêtres d'analyse longues : nombre de sources réel connu et variable entre 1 et 2 sources, p.152