不同谱特征和隐马尔可夫状态下卡西语语音表示的比较

Bronson Syiem, Sushanta Kabir Dutta, Juwesh Binong, Lairenlakpam Joyprakash Singh
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引用次数: 2

摘要

本文对四种不同谱特征的卡西语语音表示进行了比较,并对卡西语语料库的发展进行了新的拓展。这四个特征包括线性预测编码(LPC)、线性预测倒谱系数(LPCC)、感知线性预测(PLP)和Mel频率倒谱系数(MFCC)。10小时的语音数据用于训练,3小时的语音数据用于测试。针对不同的谱特征,分别构建了基于隐马尔可夫模型(HMM)的不同状态识别器和不同的高斯混合模型(GMMs)。使用单词错误率(WER)来评估性能。实验结果表明,与其他三种频谱特征相比,MFCC能更好地表征卡西语。
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Comparison of Khasi speech representations with different spectral features and hidden Markov states

In this paper, we present a comparison of the Khasi speech representations with four different spectral features and novel extension towards the development of Khasi speech corpora. These four features include linear predictive coding (LPC), linear prediction cepstrum coefficient (LPCC), perceptual linear prediction (PLP), and Mel frequency cepstral coefficient (MFCC). The 10-h speech data was used for training and 3-h data for testing. For each spectral feature, different hidden Markov model (HMM) based recognizers with variations in HMM states and different Gaussian mixture models (GMMs) were built. The performance was evaluated by using the word error rate (WER). The experimental results showed that MFCC provides a better representation for Khasi speech compared with the other three spectral features.

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来源期刊
Journal of Electronic Science and Technology
Journal of Electronic Science and Technology Engineering-Electrical and Electronic Engineering
CiteScore
4.30
自引率
0.00%
发文量
1362
审稿时长
99 days
期刊介绍: JEST (International) covers the state-of-the-art achievements in electronic science and technology, including the most highlight areas: ¨ Communication Technology ¨ Computer Science and Information Technology ¨ Information and Network Security ¨ Bioelectronics and Biomedicine ¨ Neural Networks and Intelligent Systems ¨ Electronic Systems and Array Processing ¨ Optoelectronic and Photonic Technologies ¨ Electronic Materials and Devices ¨ Sensing and Measurement ¨ Signal Processing and Image Processing JEST (International) is dedicated to building an open, high-level academic journal supported by researchers, professionals, and academicians. The Journal has been fully indexed by Ei INSPEC and has published, with great honor, the contributions from more than 20 countries and regions in the world.
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