发音特征强制转录的因子条件随机场模型

Rohit Prabhavalkar, E. Fosler-Lussier, Karen Livescu
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引用次数: 12

摘要

我们研究了发音特征的联合模型,并将这些模型应用于给定单词转录的口语话语自动生成发音转录的问题。这项任务的动机是语音识别和语言学研究需要大量标记的发音数据,这些数据既昂贵又难以通过人工转录或物理测量获得。与语音转录不同,在我们的任务中,重要的是要考虑到发音特征可能不同步的事实。我们考虑了具有显式发音器异步模型的发音状态空间的因子模型。我们比较了两种类型的图形模型:基于先前提出的模型的动态贝叶斯网络(DBN);条件随机场(CRF),我们在这里开发的。我们演示了如何利用特定于任务的约束来允许在CRF中进行有效的精确推理。在转录任务上,CRF优于DBN,相对提高2.2%至10.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A factored conditional random field model for articulatory feature forced transcription
We investigate joint models of articulatory features and apply these models to the problem of automatically generating articulatory transcriptions of spoken utterances given their word transcriptions. The task is motivated by the need for larger amounts of labeled articulatory data for both speech recognition and linguistics research, which is costly and difficult to obtain through manual transcription or physical measurement. Unlike phonetic transcription, in our task it is important to account for the fact that the articulatory features can desynchronize. We consider factored models of the articulatory state space with an explicit model of articulator asynchrony. We compare two types of graphical models: a dynamic Bayesian network (DBN), based on previously proposed models; and a conditional random field (CRF), which we develop here. We demonstrate how task-specific constraints can be leveraged to allow for efficient exact inference in the CRF. On the transcription task, the CRF outperforms the DBN, with relative improvements of 2.2% to 10.0%.
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