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Asynchronous Articulatory Feature Recognition Using Dynamic Bayesian networks

机译:动态贝叶斯网络的异步发音特征识别

摘要

This paper builds on previous work where dynamic Bayesian networks (DBN) were proposed as a modeludfor articulatory feature recognition. Using DBNs makes it possible to model the dependencies between features, an addition to previous approaches which was found to improve feature recognition performance. The DBN results were promising, giving close to the accuracy of artificial neural nets (ANNs). However, the system was trained on canonical labels, leading to an overly strong set of constraints on feature co-occurrence. In this study, we describeudan embedded training scheme which learns a set of data-driven asynchronous feature changes where supported in the data. Using a subset of the OGI Numbers corpus, we describe articulatory feature recognition experiments using both canonically-trained and asynchronous-feature DBNs. Performance using DBNs is found to exceed that of ANNs trained on an identical task, giving a higher recognition accuracy. Furthermore, inter-feature dependenciesudresult in a more structured model, giving rise to fewer feature combinations in the recognition output. In addition to an empirical evaluation of this modeling approach, we give a qualitative analysis, investigating the asynchronyudfound through our data-driven method and interpreting it using linguistic knowledge.
机译:本文建立在先前的工作基础上,其中提出了动态贝叶斯网络(DBN)作为发音特征识别的模型 ud。使用DBN可以对特征之间的依赖关系进行建模,这是对以前发现的可改善特征识别性能的方法的补充。 DBN的结果令人鼓舞,接近人工神经网络(ANN)的准确性。但是,该系统在规范标签上进行了培训,导致对要素共现的约束过强。在这项研究中,我们描述了 udan嵌入式训练方案,该方案学习了在数据支持的情况下一组数据驱动的异步功能更改。使用OGI Numbers语料库的子集,我们描述了使用规范训练的DBN和异步特征的DBN进行的发音特征识别实验。发现使用DBN的性能超过接受相同任务训练的ANN的性能,从而提供了更高的识别精度。此外,功能间的依存关系会导致结构化模型的缺乏,从而导致识别输出中的特征组合更少。除了对这种建模方法进行实证评估之外,我们还进行了定性分析,通过我们的数据驱动方法调查了异步发现,并使用语言知识对其进行了解释。

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