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On Vision Features in Multimodal Machine Translation

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arxiv 2203.09173 v1 pith:IEBNRKF6 submitted 2022-03-17 cs.CL

On Vision Features in Multimodal Machine Translation

classification cs.CL
keywords visionmodelstranslationfeaturesattentionimagemachinemultimodal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Previous work on multimodal machine translation (MMT) has focused on the way of incorporating vision features into translation but little attention is on the quality of vision models. In this work, we investigate the impact of vision models on MMT. Given the fact that Transformer is becoming popular in computer vision, we experiment with various strong models (such as Vision Transformer) and enhanced features (such as object-detection and image captioning). We develop a selective attention model to study the patch-level contribution of an image in MMT. On detailed probing tasks, we find that stronger vision models are helpful for learning translation from the visual modality. Our results also suggest the need of carefully examining MMT models, especially when current benchmarks are small-scale and biased. Our code could be found at \url{https://github.com/libeineu/fairseq_mmt}.

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    A globally video-guided multimodal translation framework retrieves semantically related video segments with a vector database and applies attention mechanisms to improve subtitle translation accuracy in long videos.