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Using patient's speech signal for vocal ford disorders detection based on lifting scheme

机译:基于提升方案将患者的语音信号用于语音福特障碍的检测

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Regarding to the impress of speech in community relations establishment and the effect of the larynx in speech, correct and timely diagnosis of diseases of vocal cords have particular importance. Since the Conventional methods for diagnosis of vocal cords are usually slow, expensive and annoying, so the purpose of this paper is to analysis and classify of vocal fold disorders with the help of audio signal processing vowel /a/. This non-invasive method is cheaper, fast and repeatable. The database used for this work was developed by Massachusetts Eye and Ear Infirmary (MEEI) voice and speech. Although common wavelet features have acceptable performance, but expected that design optimization features of adaptive wavelet based on lifting method lead to improve results. To design the adaptive wavelet transform, the parameters of lifting scheme generating biorthogonal wavelet are initially applied and then they are optimized through genetic algorithm and classification performance of support vector machine. The result separation of normal and pathological signals provides an accuracy of 98.30%. Also, the result of two-class separation based on lifting scheme indicative the advantage of this suggested method with other wavelets.
机译:关于建立社区关系中的言语印象和喉部的言语效果,正确及时地诊断声带疾病具有特别重要的意义。由于传统的诊断声带的方法通常缓慢,昂贵且烦人,因此,本文的目的是借助音频信号处理元音/ a /对声带异常进行分析和分类。这种非侵入性方法便宜,快速且可重复。用于这项工作的数据库是由马萨诸塞州眼耳医院(MEEI)的语音和语音开发的。尽管常见的小波特征具有可接受的性能,但是期望基于提升方法的自适应小波的设计优化特征能够带来改进的结果。为了设计自适应小波变换,首先应用生成双正交小波的提升方案的参数,然后通过遗传算法和支持向量机的分类性能对其进行优化。正常信号和病理信号的结果分离提供了98.30%的准确性。同样,基于提升方案的两类分离的结果表明了该建议方法与其他小波的优势。

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