DCU-UvA Multimodal MT System Report
نویسندگان
چکیده
We present a doubly-attentive multimodal machine translation model. Our model learns to attend to source language and spatial-preserving CONV5,4 visual features as separate attention mechanisms in a neural translation model. In image description translation experiments (Task 1), we find an improvement of 2.3 Meteor points compared to initialising the hidden state of the decoder with only the FC7 features and 2.9 Meteor points compared to a text-only neural machine translation baseline, confirming the useful nature of attending to the CONV5,4 features.
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