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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Myoelectric Signal Classification for Phoneme-Based Speech Recognition
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Myoelectric Signal Classification for Phoneme-Based Speech Recognition

机译:肌电信号分类用于基于音素的语音识别

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Traditional acoustic speech recognition accuracies have been shown to deteriorate in highly noisy environments. A secondary information source is exploited using surface myoelectric signals (MES) collected from facial articulatory muscles during speech. Words are classified at the phoneme level using a hidden Markov model (HMM) classifier. Acoustic and MES data was collected while the words "zero" through "nine" were spoken. An acoustic expert classified the 18 formative phonemes in low noise levels [signal-to-noise ratio (SNR) of 17.5 dB] with an accuracy of 99%, but deteriorated to approximately 38% under simulations with SNR approaching 0 dB. A fused acoustic-myoelectric multiexpert system, without knowledge of SNR, improved on acoustic classification results at all noise levels. A multiexpert system, incorporating SNR information, obtained accuracies of 99% at low noise levels while maintaining accuracies above 94% during low SNR (0 dB) simulations. Results improve on previous full word MES speech recognition accuracies by almost 10%
机译:传统的语音识别精度已被证明在高噪声环境中会恶化。使用从语音过程中从面部关节肌肉收集的表面肌电信号(MES)来开发辅助信息源。使用隐藏的马尔可夫模型(HMM)分类器在音素级别对单词进行分类。在说出“零”到“九”的同时,收集了声学和MES数据。一位声学专家将18种形成性音素分类为低噪声级别(信噪比(SNR)为17.5 dB),精度为99%,但在SNR接近0 dB的模拟下恶化为大约38%。在不了解SNR的情况下,融合的声-电复合专家系统改善了所有噪声水平下的声分类结果。包含SNR信息的多专家系统在低噪声水平下获得了99%的精度,同时在低SNR(0 dB)仿真期间将精度保持在94%以上。结果比以前的全字MES语音识别准确性提高了近10%

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