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B. Chapter, Task-specific salience for object recognition

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G. Lavoué, Y. Ariki, and A. Baskurt, Combinaison de caractéristiques pour la reconnaissance rapide, robuste et invariante d'objets spécifiques, Local Conferences: ? Reconnaissance des Formes et Intelligence Artificielle (RFIA), 2010.