Using a new Discretization of the Fourier Transform to Discriminate Voiced From Unvoiced Speech

José Antonio Camarena Ibarrola, Edgar Chávez
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引用次数: 1

Abstract

In automatic speech recognition, voice synthesis, speaker identification and identifying laringeal diseases, it is critical to classify speech segments as voiced or unvoiced. Several techniques have been proposed for this issue during the last twenty years, unfortunately, they either have especial cases where the result is unreliable or need to use not only the present segment of speech but the next one as well, this fact limits its applications (i.e continuous speech recognition). In this paper we present an alternative to voiced/unvoiced classification using a discretization of the continuous Fourier transform
利用一种新的离散化傅立叶变换来区分浊音和浊音
在语音自动识别、语音合成、说话人识别、口腔疾病识别等领域,语音片段的清、不清分类是至关重要的。在过去的二十年里,已经提出了几种技术来解决这个问题,不幸的是,它们要么有特殊情况,结果是不可靠的,要么不仅需要使用当前的语音片段,还需要使用下一个语音片段,这一事实限制了它的应用(即连续语音识别)。在本文中,我们提出了一种替代浊音/浊音分类使用连续傅里叶变换的离散化
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