ReTeRom项目中SpeeD公司罗马尼亚ASR系统的改进

Alexandru-Lucian Georgescu, H. Cucu, C. Burileanu
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引用次数: 1

摘要

罗马尼亚语的自动语音识别(ASR)正处于科学界关注的上升趋势。在过去两年中,几个研究小组报告了罗马尼亚语语音识别和对话任务的宝贵成果。在我们的论文中,我们介绍了我们最近通过收集和使用更多的文本和音频数据来训练语言和声学模型所获得的改进。我们强调采用自动化方法来方便数据收集和注释。与我们之前的工作相比,我们报告了最先进的阅读语音结果(WER为1.6%),自发语音结果明显更好:相对改善约40%)。为了便于与其他ASR系统进行直接比较,我们发布了所有评估数据集,总计10小时的人工注释语音。
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Improvements of SpeeD’s Romanian ASR system during ReTeRom project
Automatic speech recognition (ASR) for Romanian language is on an ascending trend of interest for the scientific community. In the last two years several research groups reported valuable results on speech recognition and dialogue tasks for Romanian. In our paper we present the improvements we recently obtained by collecting and using more text and audio data for training the language and acoustic models. We emphasize the automatic methodologies employed to facilitate data collection and annotation. In comparison to our previous work, we report state-of-the-art results for read speech (WER of 1.6%) and significantly better results on spontaneous speech: relative improvement around 40%). In order to facilitate direct comparison with other ASR systems, we release all evaluation datasets, totaling 10 hours of manually annotated speech.
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