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Improved Silence-Unvoiced-Voiced (SUV) Segmentation for Dysarthric Speech Signals using Linear Prediction Error Variance

机译:使用线性预测误差方差的韵律语音信号的改进的无声清音(SUV)分割

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A novel algorithm for the segmentation of dysarthric speech into silence, unvoiced and voiced (SUV) segments is presented. The proposed algorithm is based on the combination of short-time energy (STE), zero-crossing rate (ZCR) and linear prediction error variance (LPEV) or the segmentation problem. Extending the previous work in this field, the proposed method will address the difficulties in distinguishing between voiced and unvoiced segments in dysarthric speech. More precisely, the error variance of the linear prediction coefficients will be used to design a three-fold decision matrix that can accommodate the high variability in loudness experienced in dysarthric speech. In addition, a moving average threshold approach will be proposed in order to provide an “as-fit” segmentation technique that is fully automated and that will be able to handle highly severe dysarthric speech with varying loudness and ZCRs. The ability of the proposed fully-automated algorithm will be validated using real speech samples from healthy speakers, and speakers with ataxic dysarthria. The results of the proposed approach are compared with known methods using STE and ZCR. It is observed that the proposed classification method does not only show an improvement in segmentation performance but also provides consistent results in low signal energy situations.
机译:提出了一种用于将构音障碍语音分割为静音,清音和浊音(SUV)段的新算法。该算法基于短时能量(STE),过零率(ZCR)和线性预测误差方差(LPEV)或分割问题的组合。扩展了该领域的先前工作,提出的方法将解决在构音障碍语音中区分浊音和清音段的困难。更精确地,线性预测系数的误差方差将用于设计三折决策矩阵,该矩阵可以适应在构音困难的语音中出现的响度的高可变性。此外,将提出一种移动平均阈值方法,以提供一种“合适”的分割技术,该技术是完全自动化的,并且能够处理具有变化的响度和ZCR的高度严重的构音障碍语音。所提出的全自动算法的功能将使用健康说话者和患有共济失调的说话者的真实语音样本进行验证。将该方法的结果与使用STE和ZCR的已知方法进行了比较。可以看出,提出的分类方法不仅显示了分割性能的提高,而且在低信号能量情况下也提供了一致的结果。

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