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Vision Learners Meet Web Image-Text Pairs

Authors :
Zhao, Bingchen
Cui, Quan
Wu, Hao
Yoshie, Osamu
Yang, Cheng
Mac Aodha, Oisin
Zhao, Bingchen
Cui, Quan
Wu, Hao
Yoshie, Osamu
Yang, Cheng
Mac Aodha, Oisin
Publication Year :
2023

Abstract

Most recent self-supervised learning methods are pre-trained on the well-curated ImageNet-1K dataset. In this work, given the excellent scalability of web data, we consider self-supervised pre-training on noisy web sourced image-text paired data. First, we conduct a benchmark study of representative self-supervised pre-training methods on large-scale web data in a like-for-like setting. We compare a range of methods, including single-modal ones that use masked training objectives and multi-modal ones that use image-text constrastive training. We observe that existing multi-modal methods do not outperform their single-modal counterparts on vision transfer learning tasks. We derive an information-theoretical view to explain these benchmark results, which provides insight into how to design a novel vision learner. Inspired by this insight, we present a new visual representation pre-training method, MUlti-modal Generator~(MUG), that learns from scalable web sourced image-text data. MUG achieves state-of-the-art transfer performance on a variety of tasks and demonstrates promising scaling properties. Pre-trained models and code will be made public upon acceptance.<br />Comment: Project page: https://bzhao.me/MUG

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381595529
Document Type :
Electronic Resource