Skip to main content
European Commission logo
français français
CORDIS - Résultats de la recherche de l’UE
CORDIS

IMAGINE – Informing Multi-modal lAnguage Generation wIth world kNowledgE

Description du projet

Apprendre aux machines à voir le monde

L’invention des réseaux de neurones profonds a élargi l’horizon des processus d’apprentissage machine. Il est maintenant possible, pour un ordinateur, non seulement de traiter le langage naturel et la vision, mais même d’apprendre des modèles combinant vision et langage (V&L). Le projet IMAGINE, financé par l’UE, intégrera les connaissances mondiales à la génération en langage naturel et aux modèles V&L. En d’autres termes, la machine appliquera des algorithmes qui imitent nos capacités de raisonnement pour accomplir des tâches en utilisant les connaissances disponibles dans des bases de connaissances multimodales conviviales pour les machines.

Objectif

Deep neural networks have caused lasting change in the fields of natural language processing and computer vision. More recently, much effort has been directed towards devising machine learning models that bridge the gap between vision and language (V&L). In IMAGINE, I propose to lead this even further and to integrate world knowledge into natural language generation models of V&L. Such knowledge is easily taken for granted and is necessary to perform even simple human-like reasoning tasks. For example, in order to properly answer the question “What are the children doing?” about an image which shows parents with children playing in a park, a model should be able to (a) tell children from parents (e.g. children are considerably shorter), and infer that (b) because they are in a park, laughing, and with other children, they are very likely playing.
Much of this knowledge is presently available in large-scale machine-friendly multi-modal knowledge bases (KBs) and I will leverage these to improve multiple natural language generation (NLG) tasks that require human-like reasoning abilities. I will investigate (i) methods to learn representations for KBs that incorporate text and images, as well as (ii) methods to incorporate these KB representations to improve multiple NLG tasks that reason upon V&L. In (i) I will research how to train a model that learns KB representations (e.g. learning that children are young adults and likely do not work) jointly with the component that understands the image content (e.g. identifies people, animals, objects and events in an image). In (ii) I will investigate how to jointly train NLG models for multiple tasks together with the KB entity linking, so that these models benefit from one another by sharing parameters (e.g. a model that answers questions about an image benefits from the training data of a model that describes the contents of an image), and also benefit from the world knowledge representations in the KB.

Coordinateur

UNIVERSITEIT VAN AMSTERDAM
Contribution nette de l'UE
€ 232 393,92
Adresse
SPUI 21
1012WX Amsterdam
Pays-Bas

Voir sur la carte

Région
West-Nederland Noord-Holland Groot-Amsterdam
Type d’activité
Higher or Secondary Education Establishments
Liens
Coût total
€ 232 393,92

Partenaires (1)