. Segmentation-d-'un-signal-non-stationnaire-long.......-fréquence, 133 6.3.1 Segmentation basée sur une Distribution Temps-Fréquence

.. Préì-evement-des-segments, 135 6.3.2.1Préì evement du premier segment Extraction des segments -Cas général, p.138

B. Eqm, 47) obtenues, ` a un RSB moyenégaìmoyenégaì a 15 dB, en utilisant (-.-) HAF et (?) l'approche locale proposée, BCR classiques (6.45) et les (?*) BCR adaptée (6.38) et (6.42). . . . . . . . . . . . . . . 152

R. Pour-un, 10 dB : les courbes estimées (--) en utilisant l'algorithme optimal et celui sous-optimal superposées aux courbes originales (?), p.178

.. Signal-réel-de-baleine, -) algorithme sous-optimal : (a) Les trois fréquences instantanées estimées sont superposées au spectrogramme calculé avec une fenêtre glissante de 12 points et N F T = 128. (b) Les trois amplitudes instanées estimées par les deux algorithmes, Signal estimé et reconstruit par les deux méthodes superposé au (?) signal réel et au (...) signal résidu. (d) Auto-corrélation du signal résidu obtenu par les deux algorithmes, p.180

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