German Speech Recognition System using DeepSpeech

Jiahua Xu, Kaveen Matta, Shaiful Islam, A. Nürnberger
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引用次数: 4

Abstract

Speech recognition focus on the translation of speech from an audio format to a text. Popular models are available for the English language as open source in the domain of voice/speech recognition; however, German language open models and training schemes are rather rare. An end-to-end real-time German speech-to-text system based on multiple German language datasets is worthy of more attention and further investigation. In this paper, we combined multiple German datasets on the market and optimizes the Deep-speech for training a real-time German speech-to-text model. A GUI is also proposed for functionality demonstration. Our model performs considerably well compared to other state-of-the-art since we utilized noisy data to replicate real-life scenarios. We released our fully trained German model along with its parameter configurations to promote the diversification of the open-source model for the German language.
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使用DeepSpeech的德语语音识别系统
语音识别侧重于将语音从音频格式转换为文本。在语音/语音识别领域,流行的英语模型是开源的;然而,德语开放模型和培训计划相当罕见。基于多个德语语言数据集的端到端实时德语语音转文本系统是值得关注和进一步研究的问题。在本文中,我们结合了市场上的多个德语数据集,并优化了Deep-speech来训练实时德语语音到文本模型。还建议使用GUI进行功能演示。与其他先进技术相比,我们的模型表现得相当好,因为我们使用了噪声数据来复制现实场景。我们发布了经过充分训练的德语模型及其参数配置,以促进德语开源模型的多样化。
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