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Kalman-based autoregressive moving average modeling and inference for formant and antiformant tracking

机译:基于卡尔曼的自回归移动平均建模和推理,用于共振峰和反共振峰跟踪

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摘要

Vocal tract resonance characteristics in acoustic speech signals are classically tracked using frame-by-frame point estimates of formant frequencies followed by candidate selection and smoothing using dynamic programming methods that minimize ad hoc cost functions. The goal of the current work is to provide both point estimates and associated uncertainties of center frequencies and bandwidths in a statistically principled state-space framework. Extended Kalman (K) algorithms take advantage of a linearized mapping to infer formant and antiformant parameters from frame-based estimates of autoregressive moving average (ARMA) cepstral coefficients. Error analysis of KARMA, wavesurfer, and praat is accomplished in the all-pole case using a manually marked formant database and synthesized speech waveforms. KARMA formant tracks exhibit lower overall root-mean-square error relative to the two benchmark algorithms with the ability to modify parameters in a controlled manner to trade off bias and variance. Antiformant tracking performance of KARMA is illustrated using synthesized and spoken nasal phonemes. The simultaneous tracking of uncertainty levels enables practitioners to recognize time-varying confidence in parameters of interest and adjust algorithmic settings accordingly.
机译:传统上,使用共振峰频率的逐帧点估计来跟踪声学语音信号中的声道共振特性,然后使用候选方案进行选择并使用动态编程方法(使临时成本函数最小化)进行平滑处理。当前工作的目标是在统计原则上的状态空间框架中提供点估计以及中心频率和带宽的相关不确定性。扩展卡尔曼(K)算法利用线性映射的优势,从自回归移动平均(ARMA)倒频谱系数的基于帧的估计中推断共振峰和反共振峰参数。使用手动标记的共振峰数据库和合成的语音波形,可以在全极情况下完成KARMA,waveurfer和praat的误差分析。相对于两个基准算法,KARMA共振峰轨迹显示出较低的总体均方根误差,并且能够以受控方式修改参数以权衡偏差和方差。使用合成的和口鼻的音素说明了KARMA的顺应性跟踪性能。对不确定性水平的同时跟踪使从业人员能够识别出感兴趣参数的时变置信度,并据此调整算法设置。

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