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SmarTerp: A CAI System to Support Simultaneous Interpreters in Real-Time

Smarterp: نظام CAI لدعم المترجمين الفوريين في الوقت الحقيقي

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 Publication date 2021
and research's language is English
 Created by Shamra Editor




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We present a system to support simultaneous interpreting in specific domains. The system is going to be developed through a strong synergy among technicians, mostly experts on both speech and text processing, and end-users, i.e. professional interpreters who define the requirements and will test the final product. Some preliminary encouraging results have been achieved on benchmark tests collected with the aim of measuring the performance of single components of the whole system, namely: automatic speech recognition (ASR) and named entity recognition.

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