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Non-intrusive technique for pathological voice classification using jitter and shimmer

机译:使用抖动和闪光的病理语音分类的非侵入性技术

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Speech signal contains two characteristics, system and source. When there is disturbance in vocal cord function, there is notable change in source characteristic. Despite the technological advances in the medical field, the voice pathologists use endoscopic methods to view the vocal cord flap movements for patients with infections and disturbances in vocal cords which are painful. This work is an alternative for classifying pathological voice from normal voice by evaluating the jitter and shimmer variations in the speech signal of an affected person. When there is any distortion in voice, it is reflected in the source characteristics. Pitch being the fundamental source characteristic, analyzing pitch helps us classify pathological voice from normal voice. Jitter and shimmer are derived characteristics of pitch. The glottal closure instants are better representatives of source compared to pitch. In this work, we have explored using the glottal closure instants to calculate the jitter, shimmer and other speech parameters instead of the pitch period. Analyzing these jitter and shimmer parameters for various pathological voices and normal voices help us to classify them. Experiments were carried out using a database containing normal and pathological voices. An accuracy of 85% was achieved for normal-pathological voice classification.
机译:语音信号包含两个特征,系统和源。当声带函数中有干扰时,源特性有很大的变化。尽管医学领域的技术进步,但语音病理学家使用内窥镜方法来观看具有痛苦的声带感染和干扰患者的声带瓣运动。这项工作是通过评估受影响人的语音信号中的抖动和闪光变化来分类来自正常语音的病理语音的替代方案。当语音中存在任何失真时,它反映在源特征中。音高是基本源特征,分析音高有助于我们将病理声音与正常的声音分类。抖动和闪光是螺距的特征。与音调相比,所称关闭的闭路瞬间是源的更好代表。在这项工作中,我们探索了光门关闭时刻来计算抖动,闪光和其他语音参数而不是音高周期。分析各种病理声音和普通声音的这些抖动和闪光参数有助于我们对它们进行分类。使用包含正常和病理声音的数据库进行实验。对于正常病理语音分类,实现了85 %的准确性。

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