End-to-end speech recognition models using limited training data*

June-Woo Kim, H. Jung
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Abstract

Speech recognition is one of the areas actively commercialized using deep learning and machine learning techniques. However, the majority of speech recognition systems on the market are developed on data with limited diversity of speakers and tend to perform well on typical adult speakers only. This is because most of the speech recognition models are generally learned using a speech database obtained from adult males and females. This tends to cause problems in recognizing the speech of the elderly, children and people with dialects well. To solve these problems, it may be necessary to retain big database or to collect a data for applying a speaker adaptation. However, this paper proposes that a new end-to-end speech recognition method consists of an acoustic augmented recurrent encoder and a transformer decoder with linguistic prediction. The proposed method can bring about the reliable performance of acoustic and language models in limited data conditions. The proposed method was evaluated to recognize Korean elderly and children speech with limited amount of training data and showed the better performance compared of a conventional method.
使用有限训练数据的端到端语音识别模型*
语音识别是利用深度学习和机器学习技术积极商业化的领域之一。然而,市场上的大多数语音识别系统都是在有限的说话者多样性的数据上开发的,并且往往只在典型的成人说话者上表现良好。这是因为大多数语音识别模型通常是使用从成年男性和女性那里获得的语音数据库来学习的。这往往会给识别老人、儿童和有方言的人的讲话带来问题。为了解决这些问题,可能需要保留大数据库或收集数据来应用说话人适配。然而,本文提出了一种新的端到端语音识别方法,该方法由一个声学增强循环编码器和一个具有语言预测的变压器解码器组成。该方法可以在有限的数据条件下使声学模型和语言模型具有可靠的性能。在训练数据有限的情况下,对该方法进行了韩语老人和儿童语音识别的评价,结果表明该方法比传统方法具有更好的识别效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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