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Predicting Actions to Help Predict Translations

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arxiv 1908.01665 v2 pith:B6VR662N submitted 2019-08-05 cs.CL

Predicting Actions to Help Predict Translations

classification cs.CL
keywords texttranslationactionactionsdatasetfeaturesmultimodaloriginal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We address the task of text translation on the How2 dataset using a state of the art transformer-based multimodal approach. The question we ask ourselves is whether visual features can support the translation process, in particular, given that this is a dataset extracted from videos, we focus on the translation of actions, which we believe are poorly captured in current static image-text datasets currently used for multimodal translation. For that purpose, we extract different types of action features from the videos and carefully investigate how helpful this visual information is by testing whether it can increase translation quality when used in conjunction with (i) the original text and (ii) the original text where action-related words (or all verbs) are masked out. The latter is a simulation that helps us assess the utility of the image in cases where the text does not provide enough context about the action, or in the presence of noise in the input text.

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