评估谷歌语音转文本API在罗马尼亚电子学习资源中的表现

B. Iancu
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引用次数: 22

摘要

本文提出了一种利用谷歌云语音转文本API对罗马尼亚语多媒体电子学习资源进行自动语音识别的方法。材料提出了ASR系统的历史与这些系统背后的算法所使用的主要方法在一起。通过SaaS提供ASR解决方案的云计算提供商也进行了分析。在进行了简短的文献综述之后,作者着重于将谷歌云语音到文本API应用于YouTube上的各种在线视频电子学习资源。通过这样做,可以很容易地将资源编入索引并转换为可搜索的材料。使用WER分数是为了衡量模型的准确性,并将其与类似作品进行比较。结果表明,该模型可以作为多媒体电子学习资源自动索引的一种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Google Speech-to-Text API's Performance for Romanian e-Learning Resources
This paper presents a way of performing ASR on multimedia e-learning resources available in Romanian with the usage of the Google Cloud Speech-to-Text API. The material presents the history of ASR systems together with the main approaches used by the algorithms behind these systems. The cloud computing providers, that offer ASR solutions via SaaS, are analyzed as well. After performing a short literature review, the author focuses on applying the Google Cloud Speech-to-Text API on various video e-learning resources available online on YouTube. By doing this, the resources can be easily indexed and transformed into searchable materials. The WER score is used in order to measure the accuracy of the model and to compare it with similar works. The results are more than satisfying, thus the proposed model can be used as a method of automating the indexing of multimedia e-learning resources.
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