Models of tone for tonal and non-tonal languages

Florian Metze, Zaid A. W. Sheikh, A. Waibel, Jonas Gehring, Kevin Kilgour, Quoc Bao Nguyen, V. Nguyen
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引用次数: 50

Abstract

Conventional wisdom in automatic speech recognition asserts that pitch information is not helpful in building speech recognizers for non-tonal languages and contributes only modestly to performance in speech recognizers for tonal languages. To maintain consistency between different systems, pitch is therefore often ignored, trading the slight performance benefits for greater system uniformity/ simplicity. In this paper, we report results that challenge this conventional approach. We present new models of tone that deliver consistent performance improvements for tonal languages (Cantonese, Vietnamese) and even modest improvements for non-tonal languages. Using neural networks for feature integration and fusion, these models achieve significant gains throughout, and provide us with system uniformity and standardization across all languages, tonal and non-tonal.
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声调和非声调语言的声调模型
自动语音识别的传统观点认为,音高信息对构建非调性语言的语音识别器没有帮助,对调性语言的语音识别器的性能贡献也不大。因此,为了保持不同系统之间的一致性,pitch经常被忽略,为了更大的系统一致性/简单性而牺牲了轻微的性能优势。在本文中,我们报告了挑战这种传统方法的结果。我们提出了新的声调模型,为声调语言(粤语、越南语)提供一致的性能改进,甚至对非声调语言也有适度的改进。使用神经网络进行特征集成和融合,这些模型在整个过程中取得了显著的进步,并为我们提供了跨所有语言、声调和非声调的系统一致性和标准化。
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