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Automatic detection of hypernasal speech signals using nonlinear and entropy measurements

机译:使用非线性和熵测量自动检测鼻上语音信号

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Automatic hypernasality detection in children with Cleft Lip and Palate is classically performed by means of acoustic analysis; however, recent findings indicate that nonlinear dynamics features could be useful for this task. In order to continue deepening in this issue, in this paper the discriminant capability of 4 different nonlinear dynamics features along with a set of 6 entropy measurements is studied. The whole set of features is optimized using an automatic feature selection technique based on principal component analysis. The decision about the presence or absence of hypernasality is made by employing a support vector machine. The system is tested over two databases, one considers the five Spanish vowels and the words /coco/ and /gato/, and the other one considers different German words. The performance of the system is presented in terms of accuracy, sensitivity, specificity and receiver operating curves. According to the results, the accuracy of system increases when nonlinear and entropy measures are combined.
机译:唇裂和Pal裂患儿的自动鼻音自动检测通常是通过声学分析来完成的。然而,最近的发现表明非线性动力学特征可能对这项任务有用。为了继续深化这个问题,本文研究了4种不同的非线性动力学特征的判别能力以及6种熵测量值。使用基于主成分分析的自动特征选择技术优化了整个特征集。通过使用支持向量机来确定是否存在鼻气肿。该系统在两个数据库上进行了测试,一个数据库考虑了五个西班牙元音以及/ coco /和/ gato /一词,另一个数据库则考虑了不同的德语词。系统的性能以准确性,灵敏度,特异性和受体工作曲线表示。根据结果​​,非线性和熵测度相结合可以提高系统的精度。

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