CLAISDASOct 17, 2023

Long-form Simultaneous Speech Translation: Thesis Proposal

arXiv:2310.11141v1126 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

It tackles the practical limitation of pre-segmentation in real-world applications for users needing real-time translation of continuous speech.

This thesis proposal addresses the problem of end-to-end simultaneous speech translation in long-form settings without pre-segmentation, by surveying advancements, assessing obstacles, and suggesting approaches to tackle challenges.

Simultaneous speech translation (SST) aims to provide real-time translation of spoken language, even before the speaker finishes their sentence. Traditionally, SST has been addressed primarily by cascaded systems that decompose the task into subtasks, including speech recognition, segmentation, and machine translation. However, the advent of deep learning has sparked significant interest in end-to-end (E2E) systems. Nevertheless, a major limitation of most approaches to E2E SST reported in the current literature is that they assume that the source speech is pre-segmented into sentences, which is a significant obstacle for practical, real-world applications. This thesis proposal addresses end-to-end simultaneous speech translation, particularly in the long-form setting, i.e., without pre-segmentation. We present a survey of the latest advancements in E2E SST, assess the primary obstacles in SST and its relevance to long-form scenarios, and suggest approaches to tackle these challenges.

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