ASR for electro-laryngeal speech

A. Fuchs, J. A. Morales-Cordovilla, Martin Hagmüller
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引用次数: 5

Abstract

The electro-larynx device (EL) offers the possibility to re-obtain speech when the larynx is removed after a total laryngectomy. Speech produced with an EL suffers from inadequate speech sound quality, therefore there is a strong need to enhance EL speech. When disordered speech is applied to Automatic Speech Recognition (ASR) systems, the performance will significantly decrease. ASR systems are increasingly part of daily life and therefore, the word accuracy rate of disordered speech should be reasonably high in order to be able to make ASR technologies accessible for patients suffering from speech disorders. Moreover, ASR is a method to get an objective rating for the intelligibility of disordered speech. In this paper we apply disordered speech, namely speech produced by an EL, on an ASR system which was designed for normal, healthy speech and evaluate its performance with different types of adaptation. Furthermore, we show that two approaches to reduce the directly radiated EL (DREL) noise from the device itself are able to increase the word accuracy rate compared to the unprocessed EL speech.
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ASR是指电喉语音
电喉装置(EL)提供了在全喉切除术后喉部切除后重新获得语言的可能性。用慢速语音产生的语音存在语音音质不足的问题,因此迫切需要提高慢速语音。当无序语音应用于自动语音识别(ASR)系统时,其性能会显著下降。ASR系统越来越多地成为日常生活的一部分,因此,语音障碍的单词准确率应该相当高,以便能够使语音障碍患者使用ASR技术。此外,ASR是一种对语音障碍的可理解性进行客观评价的方法。在本文中,我们将无序语音,即由EL产生的语音,应用于为正常、健康语音设计的ASR系统,并通过不同类型的自适应来评估其性能。此外,我们表明,与未处理的EL语音相比,两种降低设备本身直接辐射EL (DREL)噪声的方法能够提高单词准确率。
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