自发语音片段检测和表征的局部和全局模型

Richard Dufour, Y. Estève, P. Deléglise, Frédéric Béchet
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引用次数: 22

摘要

处理自发语音是自动语音识别(ASR)系统必须处理的众多挑战之一。自发语音的主要特征是不流畅(停顿、重复、修复和错误启动),许多研究都集中在这些不流畅的检测和纠正上。在本研究中,我们将自发言语定义为无准备的言语,与有准备的言语相反,在有准备的言语中,话语中包含的句子结构良好,接近于书面文件中可以找到的句子。不流利当然是没有准备好讲话的很好的指标,但它们不是唯一的指标:不语法和语言域以及韵律模式也很重要。本文提出了一套声学和语言特征,可用于从大型音频数据库中描述和检测自发语音片段。此外,我们引入了一种利用概率模型的全局分类过程的策略,该策略显着提高了自发语音检测。
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Local and global models for spontaneous speech segment detection and characterization
Processing spontaneous speech is one of the many challenges that automatic speech recognition (ASR) systems have to deal with. The main evidences characterizing spontaneous speech are disfluencies (filled pause, repetition, repair and false start) and many studies have focused on the detection and the correction of these disfluencies. In this study we define spontaneous speech as unprepared speech, in opposition to prepared speech where utterances contain well-formed sentences close to those that can be found in written documents. Disfluencies are of course very good indicators of unprepared speech, however they are not the only ones: ungrammaticality and language register are also important as well as prosodic patterns. This paper proposes a set of acoustic and linguistic features that can be used for characterizing and detecting spontaneous speech segments from large audio databases. More, we introduce a strategy that takes advantage of a global classification procfalseess using a probabilistic model which significantly improves the spontaneous speech detection.
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