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. Gruyer, Vision Enhancement in Homogeneous and Heterogeneous Fog, vol.4, pp.6-20, 2012.
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, Liste des publications de l'auteur

, Contribution à ouvrage

T. Strat, H. Benoit-alexandre, G. Bredin, P. Quenot, and . Lambert, Hierarchical Late Fusion for Concept Detection in Videos ». In : ECCV 2012 -12th European Conference on Computer Vision. Sous la dir. d'Andrea Fusiello, Vittorio Murino et Rita Cucchiara. T. 7585. Lecture Notes in Computer Science (LNCS). Oral session 1 : WS21 -Workshop on Information Fusion in Computer Vision for Concept Recognition
URL : https://hal.archives-ouvertes.fr/hal-00732740

, , pp.335-344, 2012.

S. Brahimi, P. Benoit-alexandre, and . Lambert, Chokri Ben Amar et Najib Ben Aoun. « Semantic Segmentation using Reinforced Fully Convolutional DenseNet with Multiscale Kernel, Multimedia Tools and Applications, 2019.

A. Ben-hamida, P. Benoit-alexandre, . Lambert, . Chokri-ben, and . Amar, « Three dimensional Deep Learning approach for remote sensing image classification, IEEE Transactions on Geoscience and Remote Sensing, vol.56, pp.4420-4434

T. Strat, P. Benoit-alexandre, A. Lambert, and . Caplier, « Retina enhanced SURF descriptors for spatio-temporal concept detection, Multimedia Tools and Applications, vol.69, pp.443-469, 2014.

S. Bettahar, . Amin-boudghene, P. Stambouli, . Lambert, and . Benoit-alexandre, « PDE Based Enhancement of Color Images in RGB Space, IEEE Transactions on Image Processing, vol.21, issue.5, pp.2500-2512, 2012.

A. Benoit-alexandre and . Caplier, Barthélémy Durette et Jeanny Hérault. « Using Human Visual System Modeling for Bio-inspired Low Level Image Processing, vol.114, pp.758-773, 2010.

P. L. Benoit-alexandre and . Callet, Patrizio Campisi et Romain Cousseau. « Quality Assessment of Stereoscopic Images, EURASIP Journal on Image and Video Processing, vol.13, 2008.

, Communications à des congrès internationaux avec co

M. Jacquemont, L. Antiga, T. Vuillaume, G. Silvestri, P. Benoit-alexandre et al., « Indexed Operations for Non-rectangular Lattices Applied to Convolutional Neural Networks, VISAPP, 14th International Conference on Computer Vision Theory and Applications, 2019.

O. Maslova, L. Klein, and D. Benoit, Alexandre Dabernat et Patrick Lambert. « Receipt automatic reader, Content-Based Multimedia Indexing (CBMI) 2019, 2019.

N. Sourour-brahimi, C. B. Ben-aoun, . Amar, P. Benoit-alexandre, and . Lambert, « Multiscale Fully Convolutional DenseNet for Semantic Segmentation, WSCG 2018, International Conference on Computer Graphics, Visualization and Computer Vision, 2018.

L. Cuevas, J. Benoit-alexandre, and . Thomas, « Deep learning for dehazing : Comparison and analysis, Colour and Visual Computing Symposium (CVCS), 2018.

A. Ben-hamida, P. Benoit-alexandre, . Lambert, C. Klein, N. Ben-amar et al., « Deep Learning For Semantic Segmentation Of Remote Sensing Images With Rich Spectral Content, IEEE International Geoscience and Remote Sensing Symposium. Fort Worth, 2017.

R. Raoui-outach, C. Million-rousseau, P. Benoit-alexandre, and . Lambert, « Deep Learning for automatic sale receipt understanding, International Conference on Image Processing Theory, Tools and Applications, 2017.

A. Ben-hamida, P. Benoit-alexandre, C. Lambert, and . Ben-amar, Publications Office of the European Union, Deep Learning Approach For Remote Sensing Image Analysis, p.133, 2016.

N. Voiron, P. Benoit-alexandre, B. Lambert, and . Ionescu,

«. Deep, Learning vs Spectral Clustering into an active clustering with pairwise constraints propagation, 14th International Workshop on Content-Based Multimedia Indexing (CBMI). Bucarest, Romania, juin 2016, 2016.

A. Ben-hamida, P. Benoit-alexandre, C. Lambert, and . Ben-amar, Could Multimedia approaches help Remote Sensing Analysis ? » In : IIM 2015 Conference Image Information Mining : Earth Observation meets Multimedia. CEOSpaceTech, 2015.

N. Voiron, A. Benoit-alexandre, P. Filip, B. Lambert, and . Ionescu, « Semi-supervised Spectral Clustering with automatic propagation of pairwise constraints, 13th International Workshop on Content-Based Multimedia Indexing, pp.1-6, 2015.

T. Strat, P. Benoit-alexandre, and . Lambert, « Bags of Trajectory Words for video indexing, CBMI 2014. Klagenfuhrt, Austria, juin, 2014.

T. Strat, P. Benoit-alexandre, and . Lambert, « Retina enhanced bag of words descriptors for video classification, EUSIPCO 2014, 2014.

T. Strat, P. Benoit-alexandre, and . Lambert, « Retina enhanced SIFT descriptors for video indexing, 11th International Workshop on Content-Based Multimedia Indexing (CBMI 2013, pp.201-206, 2013.

T. Strat, P. Benoit-alexandre, A. Lambert, and . Caplier, « Retina-Enhanced SURF Descriptors for Semantic Concept Detection in Videos, 3rd International Conference on Image Processing Theory, Tools and Applications, pp.1-6, 2012.

N. Voiron, P. Benoit-alexandre, and . Lambert, Automatic difference measure between movies using dissimilarity measure fusion and rank correlation coefficients, 10th International Workshop on Content-Based Multimedia Indexing (CBMI 2012), pp.1-6, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00732734

S. Bettahar, . Amin-boudghene, P. Stambouli, . Lambert, and . Benoit-alexandre, « Enhancement of Multi-Valued Images Using PDE Coupling, European Signal Processing Conference (EUSIPCO-2011). Spain, août 2011, CDROM

B. Ionescu, C. Vertan, P. Lambert, and . Benoit-alexandre, « A color-action perceptual approach to the classification of animated movies, ACM International Conference on Multimedia Retrieval, 2011.

I. Trento, , 2011.

D. Benoit-alexandre, P. L. Alleysson, J. Callet, . Hérault, and . Spatio, Temporal Tone Mapping Operator based on a Retina model, Computational Color Imaging Workshop (CCIW'09), pp.12-22, 2009.

A. Benoit and P. L. Callet, Patrizio Campisi et Romain Cousseau. « Using disparity for quality assessment of stereoscopic images, IEEE International Conference on Image Processing, 2008.

A. Ben-hamida, P. Benoit-alexandre, . Lambert, ;. Chokri-ben-amar, S. Afrif et al., « Generative Adversarial Network (GAN) for Remote Sensing Images unsupervised Learning, 2018.

F. Marne-la-vallée,

R. Raoui-outach, C. Million-rousseau, P. Benoit-alexandre, and . Lambert, « Lecture automatique d'un ticket de caisse par vision embarquée sur un téléphone mobile, RFIA 2016. Travaux réalisés dans le cadre d'une thèse CIFRE, 2016.

N. Voiron, A. Benoit-alexandre, P. Filip, B. Lambert, and . Ionescu, « Clustering Spectral semi-supervisé avec propagation des contraintes par paires, 12ème COnference en Recherche d'Information et Applications -CORIA, 2015.

S. T. Strat, P. Benoit-alexandre, and . Lambert, Analyse de trajectoires pour l'indexation sémantique des vidéos à grande échelle, Reconnaissance de Formes et Intelligence Artificielle (RFIA) 2014. France, juin, 2014.

, Communications à des congrès internationaux sans comité de lecture

M. Jacquemont, T. Vuillaume, P. Benoit-alexandre, G. Lambert, G. Maurin et al., « Gamma-Learn : a Deep Learning framework for IACT data, ICRC 2019 -36th International Cosmic Ray Conference, 2019.

L. C. Valeriano, J. Thomas, and . Benoit-alexandre,

, Deep learning for dehazing : Benchmark and analysis, 2018.

. Hafjell and N. Øyer, , 2018.

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