ASCLLGOct 24, 2022

Does Joint Training Really Help Cascaded Speech Translation?

arXiv:2210.13700v2292 citationsh-index: 104
Originality Synthesis-oriented
AI Analysis

This work addresses error propagation issues in speech translation for researchers, highlighting incremental insights by questioning the effectiveness of current joint training methods.

The paper investigates whether joint training improves cascaded speech translation systems, finding that a strong cascaded baseline can negate any benefits from joint training and suggesting alternative approaches.

Currently, in speech translation, the straightforward approach - cascading a recognition system with a translation system - delivers state-of-the-art results. However, fundamental challenges such as error propagation from the automatic speech recognition system still remain. To mitigate these problems, recently, people turn their attention to direct data and propose various joint training methods. In this work, we seek to answer the question of whether joint training really helps cascaded speech translation. We review recent papers on the topic and also investigate a joint training criterion by marginalizing the transcription posterior probabilities. Our findings show that a strong cascaded baseline can diminish any improvements obtained using joint training, and we suggest alternatives to joint training. We hope this work can serve as a refresher of the current speech translation landscape, and motivate research in finding more efficient and creative ways to utilize the direct data for speech translation.

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