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Combining temporal and cepstral features for the automatic perceptual categorization of disordered connected speech

机译:结合时间特征和倒谱特征对无序连接语音进行自动感知分类

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The objective of the presentation is to report experiments involving the automatic classification of disordered connected speech into multiple (modal, moderately hoarse, severely hoarse) categories. Support vector machines, used for the classification, have been fed with temporal signal-to-dysperiodicity ratios, the first rahmonic amplitude as well as mel-frequency cepstral coefficients. The signal-to-dysperiodicity ratio complements the first rahmonic amplitude when categorizing voice samples according to the degree of hoarseness yielding 77% of correct classification.
机译:演示的目的是报告涉及将无序连接的语音自动分类为多个(模态,中等嘶哑,严重嘶哑)类别的实验。用于分类的支持向量机已获得了时间信号与非周期性的比率,第一个拉莫尼奇振幅以及梅尔频率的倒谱系数。当根据声音嘶哑的程度对语音样本进行分类时,信号/异常周期比率会补充第一个拉莫尼奇幅度,从而产生77%的正确分类。

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