首页> 外文会议>Helenic Conference on Artificial Intelligence(AI),(SETN 2006); 20060518-20; Heraklion(GR) >Detection of Vocal Fold Paralysis and Edema Using Linear Discriminant Classifiers
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Detection of Vocal Fold Paralysis and Edema Using Linear Discriminant Classifiers

机译:使用线性判别器检测声带麻痹和水肿

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摘要

In this paper, a two-class pattern recognition problem is studied, namely the automatic detection of speech disorders such as vocal fold paralysis and edema by processing the speech signal recorded from patients affected by the aforementioned pathologies as well as speakers unaffected by these pathologies. The data used were extracted from the Massachusetts Eye and Ear Infirmary database of disordered speech. The linear prediction coefficients are used as input to the pattern recognition problem. Two techniques are developed. The first technique is an optimal linear classifier design, while the second one is based on the dual-space linear discriminant analysis. Two experiments were conducted in order to assess the performance of the techniques developed namely the detection of vocal fold paralysis for male speakers and the detection of vocal fold edema for female speakers. Receiver operating characteristic curves are presented. Long-term mean feature vectors are proven very efficient in detecting the voice disorders yielding a probability of detection that may approach 100% for a probability of false alarm equal to 9.52%.
机译:在本文中,研究了两类模式识别问题,即通过处理从受上述病理影响的患者以及不受这些病理影响的说话者记录的语音信号来自动检测语音障碍(例如声带麻痹和水肿)。使用的数据是从马萨诸塞州言语失调的眼耳医院数据库中提取的。线性预测系数用作模式识别问题的输入。开发了两种技术。第一种技术是最优的线性分类器设计,而第二种技术则基于双空间线性判别分析。为了评估所开发技术的性能,进行了两个实验,即男性说话人的声带麻痹检测和女性说话人的声带水肿检测。给出了接收机工作特性曲线。长期平均特征向量被证明在检测语音障碍方面非常有效,产生的检测概率在虚警概率等于9.52%时可能接近100%。

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