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Statistical properties of linear prediction analysis underlying the challenge of formant bandwidth estimation

机译:线性预测分析的统计性质对共振峰带宽估计的挑战

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Formant bandwidth estimation is often observed to be more challenging than the estimation of formant center frequencies due to the presence of multiple glottal pulses within a period and short closed-phase durations. This study explores inherently different statistical properties between linear prediction (LP)-based estimates of formant frequencies and their corresponding bandwidths that may be explained in part by the statistical bounds on the variances of estimated LP coefficients. A theoretical analysis of the Cramer-Rao bounds on LP estimator variance indicates that the accuracy of bandwidth estimation is approximately twice as low as that of center frequency estimation. Monte Carlo simulations of all-pole vowels with stochastic and mixed-source excitation demonstrate that the distributions of estimated LP coefficients exhibit expectedly different variances for each coefficient. Transforming the LP coefficients to formant parameters results in variances of bandwidth estimates being typically larger than the variances of respective center frequency estimates, depending on vowel type and fundamental frequency. These results provide additional evidence underlying the challenge of formant bandwidth estimation due to inherent statistical properties of LP-based speech analysis. (C) 2015 Acoustical Society of America.
机译:由于在一个周期内和短的闭相持续时间内存在多个声门脉冲,通常观察到共振峰带宽估计比共振峰中心频率的估计更具挑战性。这项研究探索了基于线性预测(LP)的共振峰频率及其对应带宽之间固有的不同统计特性,这可能部分由估计LP系数方差的统计范围来解释。对LP估计器方差的Cramer-Rao边界的理论分析表明,带宽估计的精度大约是中心频率估计精度的两倍。带有随机和混合源激励的全极元音的蒙特卡洛模拟表明,估计的LP系数的分布显示每个系数的预期不同方差。将LP系数转换为共振峰参数会导致带宽估计的方差通常大于各个中心频率估计的方差,具体取决于元音类型和基频。由于基于LP的语音分析的固有统计特性,这些结果为共振峰带宽估计的挑战提供了额外的证据。 (C)2015年美国声学学会。

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