Speaker accent recognition through statistical descriptors of Mel-bands spectral energy and neural network model

Y. Ma, M. Paulraj, S. Yaacob, A. Shahriman, S. K. Nataraj
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引用次数: 10

Abstract

Accent recognition is one of the most important topics in automatic speaker and speaker-independent speech recognition (SI-ASR) systems in recent years. The growth of voice-controlled technologies has becoming part of our daily life, nevertheless variability in speech makes these spoken language technologies relatively difficult. One of the profound variability is accent. By classifying accent types, different models could be developed to handle SI-ASR. In this paper, we classified three accents in English language recorded from three main ethnicities in Malaysia namely Malay, Chinese and Indian using artificial neural network model. All experiments were performed in speaker-independent and three most accent-sensitive words-independent modes. Mel-bands spectral energy was extracted from eighteen bands taking the statistical values of each speech sample i.e. mean, standard deviation, kurtosis and the ratio of standard deviation to kurtosis to characterize the spectral energy distribution. The system was evaluated using independent test dataset, partial-independent test dataset and training dataset. The best three-class accuracy rate of 99.01% with independent test dataset was obtained. The overall accuracy rate for several trials was averaged to 96.79% with the average learning time at 49 epochs.
通过 Mel 波段频谱能量统计描述符和神经网络模型识别说话者口音
重音识别是近年来扬声器和扬声器无关自动语音识别(SI-ASR)系统中最重要的课题之一。语音控制技术的发展已成为我们日常生活的一部分,然而语音的多变性使这些口语技术变得相对困难。口音就是其中一种严重的变异。通过对口音类型进行分类,可以开发出不同的模型来处理 SI-ASR。在本文中,我们使用人工神经网络模型对马来西亚三个主要民族(即马来人、华人和印度人)录制的英语中的三种口音进行了分类。所有实验都是在与说话者无关和与三个最重音敏感词无关的模式下进行的。根据每个语音样本的统计值(即平均值、标准偏差、峰度以及标准偏差与峰度之比),从 18 个频段中提取了 Mel 波段频谱能量,以描述频谱能量分布的特征。使用独立测试数据集、部分独立测试数据集和训练数据集对该系统进行了评估。独立测试数据集的最佳三类准确率为 99.01%。多次试验的总体准确率平均为 96.79%,平均学习时间为 49 个历元。
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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