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Robust glottal source estimation based on joint source-filter model optimization

机译:基于联合源滤波器模型优化的稳健声门源估计

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摘要

This paper describes a robust glottal source estimation method based on a joint source-filter separation technique. In this method, the Liljencrants-Fant (LF) model, which models the glottal flow derivative, is integrated into a time-varying ARX speech production model. These two models are estimated in a joint optimization procedure, in which a Kalman filtering process is embedded for adaptively identifying the vocal tract parameters. Since the formulated joint estimation problem is a multiparameter nonlinear optimization procedure, we separate the optimization procedure into two passes. The first pass initializes the glottal source and vocal tract models by solving a quasi-convex approximate optimization problem. Having robust initial values, the joint estimation procedure determines the accuracy of model estimation implemented with a trust-region descent optimization algorithm. Experiments with synthetic and real voice signals show that the proposed method is a robust glottal source parameter estimation method with a high degree of accuracy.
机译:本文描述了一种基于联合源-滤波器分离技术的鲁棒声门源估计方法。在这种方法中,将对声门流量导数进行建模的Liljencrants-Fant(LF)模型集成到时变ARX语音生成模型中。这两个模型是在联合优化过程中估算的,其中嵌入了卡尔曼滤波过程以自适应地识别声道参数。由于制定的联合估计问题是一个多参数非线性优化程序,因此我们将优化程序分为两遍。第一遍通过解决准凸近似优化问题来初始化声门源和声道模型。具有可靠的初始值,联合估计过程确定使用信任区域下降优化算法实现的模型估计的准确性。合成和真实语音信号的实验表明,该方法是一种鲁棒的声门源参数估计方法,具有较高的准确度。

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