Pre-Trained Vision-Language Models (VL-PTMs) have shown promising capabilities in grounding natural language in image data, facilitating a broad variety of cross-modal tasks. However, we note that there exists a significant gap between the objective forms of model pre-training and fine-tuning, resulting in a need for large amounts of labeled data to stimulate the visual grounding capability of VL-PTMs for downstream tasks. To address the challenge, we present Cross-modal Prompt Tuning (CPT, alternatively, Colorful Prompt Tuning), a novel paradigm for tuning VL-PTMs, which reformulates visual grounding into a fill-in-the-blank problem with color-based co-referential markers in image and text, maximally mitigating the gap. In this way, CPT enables strong few-shot and even zero-shot visual grounding capabilities of VL-PTMs. Comprehensive experimental results show that the prompt-tuned VL-PTMs outperform their fine-tuned counterparts by a large margin (e.g., 17.3% absolute accuracy improvement, and 73.8% relative standard deviation reduction on average with one shot in RefCOCO evaluation). We make the data and code for this paper publicly available at https://github.com/thunlp/CPT.
CPT: Colorful Prompt Tuning for Pre-trained Vision-Language Models
Cross-modal Prompt Tuning uses color-based co-referential markers to enhance few-shot and zero-shot visual grounding capabilities in Vision-Language Pre-Trained Models.
- Year
- 2021
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- cpt-colorful-prompt-tuning-for-pre-trained-1
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- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2109.11797v3ARXIV-DEFAULT
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