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Generative Imagination Elevates Machine Translation (2009.09654v2)

Published 21 Sep 2020 in cs.CL and cs.AI

Abstract: There are common semantics shared across text and images. Given a sentence in a source language, whether depicting the visual scene helps translation into a target language? Existing multimodal neural machine translation methods (MNMT) require triplets of bilingual sentence - image for training and tuples of source sentence - image for inference. In this paper, we propose ImagiT, a novel machine translation method via visual imagination. ImagiT first learns to generate visual representation from the source sentence, and then utilizes both source sentence and the "imagined representation" to produce a target translation. Unlike previous methods, it only needs the source sentence at the inference time. Experiments demonstrate that ImagiT benefits from visual imagination and significantly outperforms the text-only neural machine translation baselines. Further analysis reveals that the imagination process in ImagiT helps fill in missing information when performing the degradation strategy.

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Authors (3)
  1. Quanyu Long (14 papers)
  2. Mingxuan Wang (83 papers)
  3. Lei Li (1293 papers)
Citations (33)

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