TY - JOUR
T1 - Multimodal Machine Translation through Visuals and Speech
AU - Sulubacak, Umut
AU - Caglayan, Ozan
AU - Grönroos, Stig-Arne
AU - Rouhe, Aku
AU - Elliott, Desmond
AU - Specia, Lucia
AU - Tiedemann, Jörg
PY - 2020
Y1 - 2020
N2 - Multimodal machine translation involves drawing information from more than one modality, based on the assumption that the additional modalities will contain useful alternative views of the input data. The most prominent tasks in this area are spoken language translation, image-guided translation, and video-guided translation, which exploit audio and visual modalities, respectively. These tasks are distinguished from their monolingual counterparts of speech recognition, image captioning, and video captioning by the requirement of models to generate outputs in a different language. This survey reviews the major data resources for these tasks, the evaluation campaigns concentrated around them, the state of the art in end-to-end and pipeline approaches, and also the challenges in performance evaluation. The paper concludes with a discussion of directions for future research in these areas: the need for more expansive and challenging datasets, for targeted evaluations of model performance, and for multimodality in both the input and output space.
AB - Multimodal machine translation involves drawing information from more than one modality, based on the assumption that the additional modalities will contain useful alternative views of the input data. The most prominent tasks in this area are spoken language translation, image-guided translation, and video-guided translation, which exploit audio and visual modalities, respectively. These tasks are distinguished from their monolingual counterparts of speech recognition, image captioning, and video captioning by the requirement of models to generate outputs in a different language. This survey reviews the major data resources for these tasks, the evaluation campaigns concentrated around them, the state of the art in end-to-end and pipeline approaches, and also the challenges in performance evaluation. The paper concludes with a discussion of directions for future research in these areas: the need for more expansive and challenging datasets, for targeted evaluations of model performance, and for multimodality in both the input and output space.
U2 - 10.1007/s10590-020-09250-0
DO - 10.1007/s10590-020-09250-0
M3 - Journal article
SN - 0922-6567
VL - 34
SP - 97
EP - 147
JO - Machine Translation
JF - Machine Translation
ER -