Acoustic features based word level dialect classification using SVM and ensemble methods

Nagaratna B. Chittaragi, S. Koolagudi
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引用次数: 12

Abstract

In this paper, word based dialect classification system is proposed by using acoustic characteristics of the speech signal. Dialects mainly represent the different pronunciation patterns of any language. Dialectal cues can exist at various levels such as phoneme, syllable, word, sentence and phrase in an utterance. Word level dialectal traits are extracted to recognize dialects since every word exhibits significant dialect discriminating cues. Intonational Variations in English (IViE) speech corpus recorded in British English has been considered. The corpus includes nine dialects which cover nine distinct regions of British Isles. Acoustic properties such as spectral and prosodic features are derived from word level to construct the feature vector. Further, two different classification algorithms such as support vector machine (SVM) and tree-based extreme gradient boosting (XGB) ensemble algorithms are used to extract the prominent patterns that are used to discriminate the dialects. From the experiments, a better performance has been observed with word level traits using ensemble methods over the SVM classification method.
基于声学特征的支持向量机和集成方法的词级方言分类
本文利用语音信号的声学特征,提出了一种基于词的方言分类系统。方言主要代表任何一种语言的不同发音模式。方言线索可以存在于话语中的音素、音节、单词、句子和短语等不同层次。提取词级方言特征来识别方言,因为每个词都有重要的方言区分线索。研究了英国英语语音语料库中记录的英语语调变化(IViE)。语料库包括九种方言,覆盖了不列颠群岛的九个不同地区。从词频和韵律等声学特性出发,构建特征向量。在此基础上,采用支持向量机(SVM)和基于树的极限梯度增强(XGB)集成算法提取方言识别的显著模式。从实验中可以看出,使用集成方法对词水平特征进行分类的效果优于支持向量机分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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