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Does Multimodality Help Human and Machine for Translation and Image Captioning? (1605.09186v4)
Published 30 May 2016 in cs.CL, cs.LG, and cs.NE
Abstract: This paper presents the systems developed by LIUM and CVC for the WMT16 Multimodal Machine Translation challenge. We explored various comparative methods, namely phrase-based systems and attentional recurrent neural networks models trained using monomodal or multimodal data. We also performed a human evaluation in order to estimate the usefulness of multimodal data for human machine translation and image description generation. Our systems obtained the best results for both tasks according to the automatic evaluation metrics BLEU and METEOR.
- Ozan Caglayan (20 papers)
- Walid Aransa (4 papers)
- Yaxing Wang (46 papers)
- Marc Masana (20 papers)
- Mercedes García-Martínez (10 papers)
- Fethi Bougares (18 papers)
- Loïc Barrault (34 papers)
- Joost van de Weijer (133 papers)