首页> 外文会议>European signal processing conference;EUSIPCO 2009 >ROBUST PHONEME CLASSIFICATION: EXPLOITING THE ADAPTABILITY OF ACOUSTIC WAVEFORM MODELS
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ROBUST PHONEME CLASSIFICATION: EXPLOITING THE ADAPTABILITY OF ACOUSTIC WAVEFORM MODELS

机译:稳健的音素分类:探讨声学波形模型的适应性

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The robustness of classification of isolated phoneme segments using generative classifiers is investigated for the acoustic waveform, MFCC and PLP speech representations. Gaussian mixture models with diagonal covariance matrices are used followed by maximum likelihood classification. The performance of noise adapted acoustic waveform models is compared with PLP and MFCC models that were adapted using noisy training set feature standardisation. In the presence of additive noise, acoustic waveforms have significantly lower classification error. Even for the unrealistic case where PLP and MFCC classifiers are trained and tested in exactly matched noise conditions acoustic waveform classifiers still outperform them. In both cases the acoustic waveform classifiers are trained explicitly only on quiet data and then modified by a simple transformation to account for the noise.
机译:对于声音波形,MFCC和PLP语音表示,研究了使用生成分类器对孤立音素片段进行分类的鲁棒性。使用具有对角协方差矩阵的高斯混合模型,然后进行最大似然分类。将经过噪声调整的声波形模型的性能与使用噪声训练集特征标准化进行调整的PLP和MFCC模型进行比较。在存在附加噪声的情况下,声波的分类误差明显较低。即使对于在完全匹配的噪声条件下训练和测试PLP和MFCC分类器的不切实际的情况,声波波形分类器仍然胜过它们。在这两种情况下,声波分类器仅在安静的数据上进行显式训练,然后通过简单的转换进行修改以解决噪声问题。

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