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Tips on speaker recognition by autoregressive parameters and connectionist methods

机译:通过自回归参数和连接方法识别说话者的提示

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This study reveals more interesting aspects on speaker and speech recognition as: 1. different importance of certain spectral frequency bands on the process of speaker and speech recognition; 2. signal phase has a significant importance; and 3. vowel recognition is preponderant in the decision weighting. To resolve the paradox described in A.J. Grichnik (2000), autoregressive (AR) coefficients were used to compute feature vectors in order to teach neural networks (NN). Tests made by using a two layer perceptron (MLP) were compared to a radial basis function (RBF) network in order to obtain the best recognition results.
机译:这项研究揭示了有关说话人和语音识别的更多有趣方面:1.某些频谱频带在说话人和语音识别过程中的重要性不同; 2.信号相位具有重要意义; 3.元音识别在决策权重中占优势。解决A.J. Grichnik(2000)使用自回归(AR)系数来计算特征向量,以教授神经网络(NN)。将使用两层感知器(MLP)进行的测试与径向基函数(RBF)网络进行比较,以获得最佳识别结果。

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