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VC-GPT: Visual Conditioned GPT for End-to-End Generative Vision-and-Language Pre-training

2022-01-30 04:44:54
Ziyang Luo, Yadong Xi, Rongsheng Zhang, Jing Ma

Abstract

Vision-and-language pre-training models (VLMs) have achieved tremendous success in the cross-modal area, but most of them require millions of parallel image-caption data for pre-training. Collating such data is expensive and labor-intensive. In this work, we focus on reducing such need for generative vision-and-language pre-training (G-VLP) by taking advantage of the visual pre-trained model (CLIP-ViT) as encoder and language pre-trained model (GPT2) as decoder. Unfortunately, GPT2 lacks a necessary cross-attention module, which hinders the direct connection of CLIP-ViT and GPT2. To remedy such defects, we conduct extensive experiments to empirically investigate how to design and pre-train our model. Based on our experimental results, we propose a novel G-VLP framework, Visual Conditioned GPT (VC-GPT), and pre-train it with a small-scale parallel image-caption corpus (Visual Genome, only 110k distinct images). Evaluating on the image captioning downstream tasks (MSCOCO and Flickr30k Captioning), VC-GPT achieves either the best or the second-best performance across all evaluation metrics over the previous works which consume around 30 times more parallel data during pre-training.

Abstract (translated)

URL

https://arxiv.org/abs/2201.12723

PDF

https://arxiv.org/pdf/2201.12723.pdf


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