cs.AI updates on arXiv.org 09月30日
希腊医学语音转写系统研究
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本文针对希腊医学领域,研究并开发了一套结合自动语音识别和文本校正模型的专业语音转写系统,旨在提高医疗文档的转录效率和准确性,为希腊医疗行业提供实用的语言技术支持。

arXiv:2509.23550v1 Announce Type: cross Abstract: Medical dictation systems are essential tools in modern healthcare, enabling accurate and efficient conversion of speech into written medical documentation. The main objective of this paper is to create a domain-specific system for Greek medical speech transcriptions. The ultimate goal is to assist healthcare professionals by reducing the overload of manual documentation and improving workflow efficiency. Towards this goal, we develop a system that combines automatic speech recognition techniques with text correction model, allowing better handling of domain-specific terminology and linguistic variations in Greek. Our approach leverages both acoustic and textual modeling to create more realistic and reliable transcriptions. We focused on adapting existing language and speech technologies to the Greek medical context, addressing challenges such as complex medical terminology and linguistic inconsistencies. Through domain-specific fine-tuning, our system achieves more accurate and coherent transcriptions, contributing to the development of practical language technologies for the Greek healthcare sector.

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相关标签

语音识别 医学文档 希腊医疗 文本校正 语言技术
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