基于熵的汉语方言韵律特征分析

Raymond W. M. Ng, Tan Lee
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引用次数: 4

摘要

本文提出了一种新的方法来分析四种汉语方言:吴语、粤语、闽语和普通话的韵律特征。最终目标是利用这些特征来完成语音自动识别任务。为了解决数据稀疏和缺少演讲者的问题,我们制定了两个基于熵的评估指标。不同的韵律相关的声学特征及其组合进行了评估。FO、FO梯度和强度包含了最多的语言相关信息。语言相关信息在句子中FO、FO梯度和音节位置的多维N-gram特征中观察到最多。还有一些不确定的结果揭示了所建议的度量标准的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy-Based Analysis of the Prosodic Features of Chinese Dialects
In this paper, a novel approach is proposed to analyze prosodic features of four Chinese dialects: Wu, Cantonese, Min and Mandarin. The ultimate goal is to exploit these features in the task of automatic spoken language identification. Two entropy-based evaluation metrics are formulated to address the problems of data sparseness and lack of speakers. Different prosody-related acoustic features and their combinations are evaluated. FO, FO gradient and intensity are found to contain the most language-related information. Maximum language-related information are observed in multi-dimensional N-gram features with FO, FO gradient and syllable position in sentence. There are also some uncertain results that reveal the limitations of the proposed metrics.
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