Towards Multilingual Conversations in the Medical Domain: Development of Multilingual Medical Data and A Network-based ASR System

LREC 2014 Sakriani SaktiKeigo KuboSho MatsumiyaGraham NeubigTomoki TodaSatoshi NakamuraFumihiro AdachiRyosuke Isotani

This paper outlines the recent development on multilingual medical data and multilingual speech recognition system for network-based speech-to-speech translation in the medical domain. The overall speech-to-speech translation (S2ST) system was designed to translate spoken utterances from a given source language into a target language in order to facilitate multilingual conversations and reduce the problems caused by language barriers in medical situations... (read more)

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