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Improved CEEMDAN Based Speech Signal Analysis Algorithm for Mental Disorders Diagnostic System: Pitch Frequency Detection and Measurement

机译:基于CEEMDAN的改进的用于精神障碍诊断系统的语音信号分析算法:音调频率检测和测量

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摘要

An automated algorithm for pitch frequency measurement for diagnostic systems of borderline mental disorders is developed. It is based on decomposition of a speech signal into frequency components using an adaptive method for analyzing of non-stationary signals, improved complete ensemble empirical mode decomposition with adaptive noise (improved CEEMDAN), and isolating the component containing pitch. A block diagram for the developed algorithm and a detailed mathematical description are presented. A research of the algorithm using the formed verified signal base of healthy patients, and male and female patients with psychogenic disorders, aged from 18 to 60, is conducted. The research results are evaluated in comparison with the known algorithms for pitch frequency measurement. In accordance with the results of the study, the developed algorithm for pitch frequency measurement provides an accuracy increase in determination of borderline mental disorders: for the error of the first kind, on the average, it is more accurate by 10.7%, and for the second type error by 4.7%.
机译:开发了一种用于边缘性精神障碍诊断系统的音调频率测量的自动算法。它基于使用自适应方法将语音信号分解为频率分量以分析非平稳信号,利用自适应噪声改进的完整整体经验模式分解(改进的CEEMDAN)以及隔离包含音高的分量。给出了所开发算法的框图和详细的数学描述。使用已形成的已验证的健康患者以及男性和女性精神病患者(年龄在18至60岁)的已验证信号库对算法进行了研究。与已知的音调频率测量算法相比,对研究结果进行了评估。根据研究结果,已开发的音调频率测量算法可提高边缘性精神障碍的确定准确度:对于第一种错误,平均而言,它的准确率要高出10.7%,对于第二类错误降低了4.7%。

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