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Autoregressive decomposition and pole tracking applied to vocal fold nodule signals

机译:自回归分解和极点跟踪应用于声带结节信号

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摘要

This letter describes a novel algorithm that is based on autoregressive decomposition and pole tracking used to recognize two patterns of speech data: normal voice and disphonic voice caused by nodules. The presented method relates the poles and the peaks of the signal spectrum which represent the periodic components of the voice. The results show that the perturbation contained in the signal is clearly depicted by pole's positions. Their variability is related to jitter and shimmer. The pole dispersion for pathological voices is about 20% higher than for normal voices, therefore, the proposed approach is a more trustworthy measure than the classical ones.
机译:这封信介绍了一种基于自回归分解和极点跟踪的新颖算法,该算法用于识别语音数据的两种模式:正常语音和结节引起的无声语音。提出的方法将信号频谱的极点和峰值关联起来,这些极点和峰值代表语音的周期性分量。结果表明,信号中包含的扰动可以通过极点的位置清楚地描绘出来。它们的可变性与抖动和闪光有关。病理性语音的极点分散度比普通语音高大约20%,因此,所提出的方法比传统方法更值得信赖。

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