LIUM-CVC submissions for WMT17 multimodal translation task
File(s)W17-4746.pdf (196.1 KB)
Working paper
Author(s)
Type
Working Paper
Abstract
This paper describes the monomodal and multimodal Neural Machine Translation
systems developed by LIUM and CVC for WMT17 Shared Task on Multimodal
Translation. We mainly explored two multimodal architectures where either
global visual features or convolutional feature maps are integrated in order to
benefit from visual context. Our final systems ranked first for both En-De and
En-Fr language pairs according to the automatic evaluation metrics METEOR and
BLEU.
systems developed by LIUM and CVC for WMT17 Shared Task on Multimodal
Translation. We mainly explored two multimodal architectures where either
global visual features or convolutional feature maps are integrated in order to
benefit from visual context. Our final systems ranked first for both En-De and
En-Fr language pairs according to the automatic evaluation metrics METEOR and
BLEU.
Date Issued
2017-07-14
Citation
2017
Publisher
arxiv
Copyright Statement
© 2017 The Authors.
Identifier
http://arxiv.org/abs/1707.04481v1
Subjects
cs.CL
cs.CL
Notes
MMT System Description Paper for WMT17
Publication Status
Published