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首页> 外文期刊>International Journal of Electrical and Computer Engineering >Improved Algorithm for Pathological and Normal Voices Identification
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Improved Algorithm for Pathological and Normal Voices Identification

机译:病理和正常语音识别的改进算法

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There are a lot of papers on automatic classification between normal and pathological voices, but they have the lack in the degree of severity estimation of the identified voice disorders. Building a model of pathological and normal voices identification, that can also evaluate the degree of severity of the identified voice disorders among students. In the present work, we present an automatic classifier using acoustical measurements on registered sustained vowels /a/ and pattern recognition tools based on neural networks. The training set was done by classifying students’ recorded voices based on threshold from the literature. We retrieve the pitch, jitter, shimmer and harmonic-to-noise ratio values of the speech utterance /a/, which constitute the input vector of the neural network. The degree of severity is estimated to evaluate how the parameters are far from the standard values based on the percent of normal and pathological values. In this work, the base data used for testing the proposed algorithm of the neural network is formed by healthy and pathological voices from German database of voice disorders. The performance of the proposed algorithm is evaluated in a term of the accuracy (97.9%), sensitivity (1.6%), and specificity (95.1%). The classification rate is 90% for normal class and 95% for pathological class.
机译:关于正常声音和病理声音之间的自动分类的论文很多,但是它们缺乏对识别出的声音障碍进行严重程度估计的程度。建立病理和正常声音识别的模型,该模型还可以评估学生中识别出的声音障碍的严重程度。在当前的工作中,我们提出了一种自动分类器,它使用对已注册的持续元音/ a /进行声学测量和基于神经网络的模式识别工具。通过根据文献中的阈值对学生录制的声音进行分类来完成训练。我们检索语音发音/ a /的音调,抖动,闪烁和谐波噪声比值,这些值构成了神经网络的输入向量。根据正常值和病理值的百分比估算严重程度,以评估参数与标准值的差距。在这项工作中,用于测试所提出的神经网络算法的基础数据由来自德国语音障碍数据库的健康和病理性语音形成。所提出算法的性能是根据准确性(97.9%),灵敏度(1.6%)和特异性(95.1%)来评估的。正常分类的分类率为90%,病理分类的分类率为95%。

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