Braeden Bowen
2024
Adding multimodal capabilities to a text-only translation model
Vipin Vijayan
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Braeden Bowen
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Scott Grigsby
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Timothy Anderson
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Jeremy Gwinnup
Proceedings of the 16th Conference of the Association for Machine Translation in the Americas (Volume 1: Research Track)
While most current work in multimodal machine translation (MMT) uses the Multi30k dataset for training and evaluation, we find that the resulting models overfit to the Multi30k dataset to an extreme degree. Consequently, these models perform very badly when evaluated against typical text-only testing sets such as the newstest datasets. In order to perform well on both Multi30k and typical text-only datasets, we use a performant text-only machine translation (MT) model as the starting point of our MMT model. We add vision-text adapter layers connected via gating mechanisms to the MT model, and incrementally transform the MT model into an MMT model by 1) pre-training using vision-based masking of the source text and 2) fine-tuning on Multi30k. We achieve a state-of-the-art performance on the Multi30k 2016 en-de test set of 46.5 BLEU4 score and 0.61 CoMMuTE score via this approach while retaining the performance of the original text-only MT model against the newstest dataset.
Detecting concrete visual tokens for Multimodal Machine Translation
Braeden Bowen
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Vipin Vijayan
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Scott Grigsby
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Timothy Anderson
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Jeremy Gwinnup
Proceedings of the 16th Conference of the Association for Machine Translation in the Americas (Volume 1: Research Track)
The challenge of visual grounding and masking in multimodal machine translation (MMT) systems has encouraged varying approaches to the detection and selection of visually-grounded text tokens for masking. We introduce new methods for detection of visually and contextually relevant (concrete) tokens from source sentences, including detection with natural language processing (NLP), detection with object detection, and a joint detection-verification technique. We also introduce new methods for selection of detected tokens, including shortest n tokens, longest n tokens, and all detected concrete tokens. We utilize the GRAM MMT architecture to train models against synthetically collated multimodal datasets of source images with masked sentences, showing performance improvements and improved usage of visual context during translation tasks over the baseline model.