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Universal attribute characterization of spoken languages for automatic spoken language recognition

机译:口语的通用属性表征,用于自动口语识别

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We propose a novel universal acoustic characterization approach to spoken language recognition (LRE). The key idea is to describe any spoken language with a common set of fundamental units that can be defined "universally" across all spoken languages. In this study, speech attributes, such as manner and place of articulation, are chosen to form this unit inventory and used to build a set of language-universal attribute models with data-driven modeling techniques. The vector space modeling approach to LRE is adopted, where a spoken utterance is first decoded into a sequence of attributes independently of its language. Then, a feature vector is generated by using co-occurrence statistics of manner or place units, and the final LRE decision is implemented with a vector space language classifier. Several architectural configurations will be studied, and it will be shown that best performance is attained using a maximal figure-of-merit language classifier. Experimental evidence not only demonstrates the feasibility of the proposed techniques, but it also shows that the proposed technique attains comparable performance to standard approaches on the LRE tasks investigated in this work when the same experimental conditions are adopted.
机译:我们提出了一种新颖的通用声学表征方法,用于语音识别(LRE)。关键思想是用一组通用的基本单位来描述任何一种口头语言,这些基本单位可以在所有口头语言中“通用”定义。在这项研究中,语音属性(例如发音的方式和地点)被选择来形成此单元清单,并用于通过数据驱动的建模技术构建一组语言通用的属性模型。 LRE的向量空间建模方法被采用,其中语音首先被解码为与语言无关的属性序列。然后,通过使用方式或位置单位的共现统计信息生成特征向量,并使用向量空间语言分类器实现最终的LRE决策。将研究几种体系结构配置,并且将证明使用最大品质因数语言分类器可获得最佳性能。实验证据不仅证明了所提出的技术的可行性,而且还表明,在采用相同的实验条件的情况下,所提出的技术在这项工作中研究的LRE任务上具有与标准方法相当的性能。

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