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Unifying Vision-Language Representation Space with Single-tower Transformer

Authors :
Jang, Jiho
Kong, Chaerin
Jeon, Donghyeon
Kim, Seonhoon
Kwak, Nojun
Publication Year :
2022

Abstract

Contrastive learning is a form of distance learning that aims to learn invariant features from two related representations. In this paper, we explore the bold hypothesis that an image and its caption can be simply regarded as two different views of the underlying mutual information, and train a model to learn a unified vision-language representation space that encodes both modalities at once in a modality-agnostic manner. We first identify difficulties in learning a generic one-tower model for vision-language pretraining (VLP), and propose OneR as a simple yet effective framework for our goal. We discover intriguing properties that distinguish OneR from the previous works that learn modality-specific representation spaces such as zero-shot object localization, text-guided visual reasoning and multi-modal retrieval, and present analyses to provide insights into this new form of multi-modal representation learning. Thorough evaluations demonstrate the potential of a unified modality-agnostic VLP framework.<br />Comment: AAAI 2023, 11 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.11153
Document Type :
Working Paper