Learning Deep Structure-Preserving Image-Text Embeddings
About
This paper proposes a method for learning joint embeddings of images and text using a two-branch neural network with multiple layers of linear projections followed by nonlinearities. The network is trained using a large margin objective that combines cross-view ranking constraints with within-view neighborhood structure preservation constraints inspired by metric learning literature. Extensive experiments show that our approach gains significant improvements in accuracy for image-to-text and text-to-image retrieval. Our method achieves new state-of-the-art results on the Flickr30K and MSCOCO image-sentence datasets and shows promise on the new task of phrase localization on the Flickr30K Entities dataset.
Liwei Wang, Yin Li, Svetlana Lazebnik• 2015
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image-to-Text Retrieval | Flickr30K 1K (test) | R@140.3 | 439 | |
| Text-to-Image Retrieval | Flickr30k (test) | Recall@129.7 | 423 | |
| Image-to-Text Retrieval | Flickr30k (test) | R@140.3 | 370 | |
| Image Retrieval | Flickr30k (test) | R@129.7 | 195 | |
| Image Retrieval | Flickr30K | R@129.7 | 144 | |
| Image Retrieval | MS-COCO 1K (test) | R@139.6 | 128 | |
| Text-to-Image Retrieval | MSCOCO (1K test) | R@139.6 | 104 | |
| Image-to-Text Retrieval | MSCOCO (1K test) | R@150.1 | 82 | |
| Image Annotation | Flickr30k (test) | R@140.3 | 39 | |
| Phrase Localization | Flickr30K Entities (test) | Accuracy43.89 | 35 |
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