ENGILBERGE Martin

Doctor
Equipo : MLIA
Fecha de salida : 12/06/2020
https://lip6.fr/Martin.Engilberge

Dirección de investigación : Matthieu CORD

Deep multimodal embeddings and grounding

Nowadays Artificial Intelligence (AI) is omnipresent in our society. The recent development of learning methods based on deep neural networks also called "Deep Learning" has led to a significant improvement in visual and textual representation models. In this thesis, we aim to further advance image representation and understanding. Revolving around Visual Semantic Embedding (VSE) approaches, we explore different directions: We present relevant background covering images and textual representation and existing multimodal approaches. We propose novel architectures further improving retrieval capability of VSE and we extend VSE models to novel applications and leverage embedding models to visually ground semantic concept. Finally, we delve into the learning process and in particular the loss function by learning differentiable approximation of ranking based metric.

Defensa : 12/06/2020

miembros del jurado :

M. AVRITHIS Yannis, Senior Researcher, INRIA Rennes [Rapporteur]
M. THOME Nicolas, Professeur, CNAM [Rapporteur]
Mme LARLUS Diane, Senior Research Scientist, NAVER Labs
M. PONCE Jean, Directeur de Recherche, INRIA - ENS
M. GALLINARI Patrick, Professeur, Sorbonne Université
M. PEREZ Patrick, Directeur de Recherche, Valeo.ai
M. CORD Matthieu, Professeur, Sorbonne Université

Fecha de salida : 12/06/2020

Publicaciones 2018-2020

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