Discriminative multimodal learning via conditional priors in generative models
Permanent link
https://hdl.handle.net/10037/32434Date
2023-11-02Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Deep generative models with latent variables have been used lately to learn joint representations and generative processes from multi-modal data, which depict an object from different viewpoints. These two learning mechanisms can, however, conflict with each other and representations can fail to embed information on the data modalities. This research studies the realistic scenario in which all modalities and class labels are available for model training, e.g. images or handwriting, but where some modalities and labels required for downstream tasks are missing, e.g. text or annotations. We show, in this scenario, that the variational lower bound limits mutual information between joint representations and missing modalities. We, to counteract these problems, introduce a novel conditional multi-modal discriminative model that uses an informative prior distribution and optimizes a likelihood-free objective function that maximizes mutual information between joint representations and missing modalities. Extensive experimentation demonstrates the benefits of our proposed model, empirical results show that our model achieves state-of-the-art results in representative problems such as downstream classification, acoustic inversion, and image and annotation generation.
Publisher
ElsevierCitation
Andrade Mancisidor, Kampffmeyer, Aas, Jenssen. Discriminative multimodal learning via conditional priors in generative models. Neural Networks. 2023;169Metadata
Show full item recordCollections
Copyright 2023 The Author(s)