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5 months ago

Multi-Grained Vision Language Pre-Training: Aligning Texts with Visual Concepts

Zeng Yan ; Zhang Xinsong ; Li Hang

Multi-Grained Vision Language Pre-Training: Aligning Texts with Visual
  Concepts

Abstract

Most existing methods in vision language pre-training rely on object-centricfeatures extracted through object detection and make fine-grained alignmentsbetween the extracted features and texts. It is challenging for these methodsto learn relations among multiple objects. To this end, we propose a new methodcalled X-VLM to perform `multi-grained vision language pre-training.' The keyto learning multi-grained alignments is to locate visual concepts in the imagegiven the associated texts, and in the meantime align the texts with the visualconcepts, where the alignments are in multi-granularity. Experimental resultsshow that X-VLM effectively leverages the learned multi-grained alignments tomany downstream vision language tasks and consistently outperformsstate-of-the-art methods.

Code Repositories

zengyan-97/x-vlm
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
cross-modal-retrieval-on-coco-2014X-VLM (base)
Image-to-text R@1: 81.2
Image-to-text R@10: 98.2
Image-to-text R@5: 95.6
Text-to-image R@1: 63.4
Text-to-image R@10: 91.5
Text-to-image R@5: 85.8
cross-modal-retrieval-on-flickr30kX-VLM (base)
Image-to-text R@1: 97.1
Image-to-text R@10: 100.0
Image-to-text R@5: 100.0
Text-to-image R@1: 86.9
Text-to-image R@10: 98.7
Text-to-image R@5: 97.3
image-captioning-on-coco-captionsX-VLM (base)
BLEU-4: 41.3
CIDER: 140.8
image-retrieval-on-flickr30k-1k-testX-VLM (base)
R@1: 86.9
R@10: 98.7
R@5: 97.3
open-vocabulary-attribute-detection-on-ovad-1X-VLM
mean average precision: 28.0
visual-grounding-on-refcoco-test-bX-VLM (base)
Accuracy (%): 76.91
visual-grounding-on-refcoco-testaX-VLM (base)
Accuracy (%): 89.00
visual-grounding-on-refcoco-valX-VLM (base)
Accuracy (%): 84.51
visual-question-answering-on-vqa-v2-test-devX-VLM (base)
Accuracy: 78.22
visual-reasoning-on-nlvr2-devX-VLM (base)
Accuracy: 84.41
visual-reasoning-on-nlvr2-testX-VLM (base)
Accuracy: 84.76

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Multi-Grained Vision Language Pre-Training: Aligning Texts with Visual Concepts | Papers | HyperAI