语言和韵律模型的马尔可夫组合,以更好地理解和识别语音

A. Stolcke, Elizabeth Shriberg
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引用次数: 3

摘要

只提供摘要形式。传统上,“语言”模型只捕获语言的单词序列。然而,口语的一个重要组成部分是韵律,即节奏和旋律的特性。本文总结了最近在综合的、计算高效的词序列和语音韵律特性建模方面的工作,用于各种语音识别和理解任务,如对话行为标记、不流畅检测和句子和主题分割。在每一种情况下,基础结构和相关观察的隐藏马尔可夫表示都是自然产生的,并允许现有的语音识别器与单独训练的韵律分类器相结合。相同的基于hmm的模型可以用于两种模式:恢复隐藏结构(如句子边界),或评估语音识别假设,从而将韵律整合到识别过程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markovian combination of language and prosodic models for better speech understanding and recognition
Summary form only given. Traditionally, "language" models capture only the word sequences of a language. A crucial component of spoken language, however is its prosody, i.e., rhythmic and melodic properties. This paper summarizes recent work on integrated, computationally efficient modeling of word sequences and prosodic properties of speech, for a variety of speech recognition and understanding tasks, such as dialog act tagging, disfluency detection, and segmentation into sentences and topics. In each case it turns out that hidden Markov representations of the underlying structures and associated observations arise naturally, and allow existing speech recognizers to be combined with separately trained prosodic classifiers. The same HMM-based models can be used in two modes: to recover hidden structure (such as sentence boundaries), or to evaluate speech recognition hypotheses, thereby integrating prosody into the recognition process.
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