T. Debroutelle, A. Chetouani, S. Treuillet, L. Martin, and M. Exbrayat, Automatic classification of ceramic sherds with relief motifs, Journal of Electronic Imaging, vol.26, issue.2, p.23010, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01548840

, Conférences Internationales

T. Debroutelle, A. Chetouani, S. Treuillet, L. Martin, and M. Exbrayat, Classification of friezes engraved on ceramic sherds from 3d scans, IEEE International Symposium on Signal Processing and Information Technology, pp.218-222, 2016.
DOI : 10.1109/isspit.2016.7886038

T. Debroutelle, A. Chetouani, S. Treuillet, L. Martin, and M. Exbrayat, Automatic pattern recognition on archaeological ceramic by 2d and 3d image analysis : A feasibility study, Image Processing Theory, Tools and Applications, vol.11, p.2015

, Conférences Nationales

L. Martin, M. Exbrayat, T. Debroutelle, A. Chetouani, and S. Treuillet, Recherche de groupes parallèles en classification non-supervisée. Extraction et Gestion des Connaissances, pp.69-80, 2016.

T. Debroutelle, A. Chetouani, S. Treuillet, L. Martin, and M. Exbrayat,

, Extraction et classification de motifs de tessons de céramique. Reconnaissance de Publications liées à la thèse

, Formes et l'Intelligence Artificielle (RFIA), 2016.

T. Debroutelle, A. Chetouani, S. Treuillet, L. Martin, and M. Exbrayat,

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R. Janvier, T. Debroutelle, A. Chetouani, S. Treuillet, M. Exbrayat et al., Etude de faisabilité d'une reconnaissance automatique de motifs cé-ramiques archéologiques par analyse d'images 2d et 3d. Congrès des jeunes chercheurs en vision par ordinateur -ORASIS, 2015.

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