Doubly-Attentive Decoder for Multi-modal Neural Machine Translation
About
We introduce a Multi-modal Neural Machine Translation model in which a doubly-attentive decoder naturally incorporates spatial visual features obtained using pre-trained convolutional neural networks, bridging the gap between image description and translation. Our decoder learns to attend to source-language words and parts of an image independently by means of two separate attention mechanisms as it generates words in the target language. We find that our model can efficiently exploit not just back-translated in-domain multi-modal data but also large general-domain text-only MT corpora. We also report state-of-the-art results on the Multi30k data set.
Iacer Calixto, Qun Liu, Nick Campbell• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multimodal Machine Translation | Multi30K (test) | BLEU-436.5 | 139 | |
| Multimodal Machine Translation (English-German) | Multi30K 2016 (test) | BLEU36.5 | 52 | |
| Multimodal Machine Translation | Multi30k En-De 2017 (test) | METEOR61.83 | 45 | |
| Multimodal Machine Translation | Multi30k En-Fr 2017 (test) | METEOR75.71 | 31 | |
| Multimodal Machine Translation | Multi30k En-Fr 2016 (test) | METEOR Score81.12 | 30 | |
| Machine Translation | Multi30k En→Fr v1 2017 (test) | BLEU53.72 | 30 | |
| Machine Translation | Multi30k Task1 (en-de) | BLEU Score41.45 | 26 | |
| Machine Translation | Multi30k Task1 en-fr | BLEU Score61.99 | 25 | |
| Machine Translation | Multi30k M30kT (test) | BLEU Score33.95 | 19 | |
| Multimodal Machine Translation | VaTex En-Zh (half of val) | BLEU36.05 | 12 |
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