cs.AI updates on arXiv.org 07月08日 14:58
End-to-End Evaluation for Low-Latency Simultaneous Speech Translation
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本文提出首个低延迟语音翻译评估框架,实现多方面评估,并对比不同方法,提供翻译质量、延迟及可视化展示。

arXiv:2308.03415v4 Announce Type: replace-cross Abstract: The challenge of low-latency speech translation has recently draw significant interest in the research community as shown by several publications and shared tasks. Therefore, it is essential to evaluate these different approaches in realistic scenarios. However, currently only specific aspects of the systems are evaluated and often it is not possible to compare different approaches. In this work, we propose the first framework to perform and evaluate the various aspects of low-latency speech translation under realistic conditions. The evaluation is carried out in an end-to-end fashion. This includes the segmentation of the audio as well as the run-time of the different components. Secondly, we compare different approaches to low-latency speech translation using this framework. We evaluate models with the option to revise the output as well as methods with fixed output. Furthermore, we directly compare state-of-the-art cascaded as well as end-to-end systems. Finally, the framework allows to automatically evaluate the translation quality as well as latency and also provides a web interface to show the low-latency model outputs to the user.

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低延迟语音翻译 评估框架 翻译质量
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