基于贝叶斯多元建模和隐马尔可夫建模(HMM)的卡纳达语音素自动识别方法比较

Prashanth Kannadaguli, Vidya Bhat
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引用次数: 6

摘要

建立了基于贝叶斯多元建模方案和隐马尔可夫建模(HMM)方案的音素识别系统并进行了比较。这两个模型都是通过随机模式识别和声学语音方案来识别音素。由于我们的母语是卡纳达语,一种丰富的南印度语言,我们使用了15个卡纳达语的音素来训练和测试这些模型。由于Mel - Frequency倒谱系数(MFCC)是人们熟知的语音声学特征,我们将其用于语音特征提取。最后,两种模型在音素错误率(PER)方面的性能分析证明了动态建模比静态建模产生更好的结果,可以用于开发自动语音识别系统。
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A comparison of Bayesian multivariate modeling and hidden Markov modeling (HMM) based approaches for automatic phoneme recognition in kannada
We build and compare phoneme recognition systems based on Bayesian Multivariate Modeling scheme and Hidden Markov Modeling (HMM) scheme. Both models were built by using Stochastic pattern recognition and Acoustic phonetic schemes to recognise phonemes. Since our native language is Kannada, a rich South Indian Language, we have used 15 Kannada phonemes to train and test these models. Since Mel - Frequency Cepstral Coefficients (MFCC) are well known Acoustic features of speech, we have used the same in speech feature extraction. Finally performance analysis of both models in terms of Phoneme Error Rate (PER) justifies the fact that Dynamic modeling yields better results over Static modeling and can be used in developing Automatic Speech Recognition systems.
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