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AR and ARMA system identification techniques under heavy noisy conditions and their applications to speech analysis.

机译:嘈杂条件下的AR和ARMA系统识别技术及其在语音分析中的应用。

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System identification under noisy environment has axiomatic importance in numerous fields, such as communication, control, and signal processing. The system identification is to estimate and validate the parameters of the system from its output observations, a task that becomes very difficult when the system output is heavily noise-corrupted. The major objective of this research is to develop novel system identification techniques for an accurate estimation of the parameters of minimum phase autoregressive (AR) and autoregressive moving average (ARMA) systems in practical situations where the system input is not accessible and only noise-corrupted observations are available. Unlike conventional system identification methods in which only the white noise excitation is considered, both the white noise and periodic impulse-train excitations are taken into account in the methodologies developed with an aim of directly using them in speech analysis.;A new ARMA correlation model is developed, based on which a two-stage correlation-domain ARMA system identification method is proposed. In the first stage, the new model in conjunction with a residue based least-squares (RBLS) model-fitting optimization algorithm is used to estimate the AR parameters. In the second stage, the moving average (MA) parameters are estimated from the residual signal obtained by filtering the observed data using the estimated AR parameters. With a view to overcome the adverse affect of noise on the MA part, a noise-compensation scheme using an inverse autocorrelation function (IACF) of the residual signal is also proposed.;Cepstrum analysis has been popular in speech and biomedical signal processing. In this thesis, several cepstral domain techniques are developed to identify AR and ARMA systems in noisy conditions. First, a ramp-cepstrum model for the one-sided autocorrelation function (ACF) of the AR and ARMA signals is proposed, which is then used for the estimation of the parameters of AR or ARMA systems using the RBLS algorithm. It is shown that for the estimation of the MA parameters of the ARMA systems, either a direct ramp-cepstrum model-fitting based approach or a noise-compensation based approach can be adopted. Considering that, in the case of real signals, discrete cosine transform is more attractive than the Fourier transform (FT) in terms of the computational complexity, a ramp cosine cepstrum model is also proposed for the identification of the AR and ARMA systems.;In order to overcome the limitations of the conventional low-order Yule-Walker methods, a noise-compensated quadratic eigenvalue method utilizing the low-order lags of the ACF, is proposed for the estimation of the AR parameters of the ARMA system along with the noise variance. For the estimation of the MA parameters, the new noise-compensation method, in which, a spectral factorization of the resulting noise-compensated ACF of the residual signal is used, is employed.;In order to study the effectiveness of the proposed identification techniques, extensive simulations are carried out by considering synthetic AR and ARMA systems of various orders under heavy noisy conditions. The results demonstrate the significant superiority of the proposed techniques over some of the existing methods even under very low levels of SNR. Simulation results on the identification of human vocal-tract systems using natural speech signals are also provided, showing a superior performance of the new techniques.;As an illustration of application of the proposed AR and ARMA system identification techniques to speech analysis, noise robust schemes for the estimation of formant frequencies are developed. Synthetic and natural phonemes including some naturally spoken sentences in noisy environments are tested using the new formant estimation schemes. The experimental results demonstrate a performance superior to that of some of state-of-the-art methods at low levels of SNR.
机译:嘈杂环境下的系统识别在通信,控制和信号处理等众多领域中具有公理上的重要性。系统识别是根据输出观察值估计和验证系统参数,当系统输出受到严重噪声破坏时,这项任务将变得非常困难。这项研究的主要目的是开发新颖的系统识别技术,用于在实际情况下无法访问系统输入并且只有噪声损坏的情况下,准确估计最小相位自回归(AR)和自回归移动平均(ARMA)系统的参数。观察是可用的。与仅考虑白噪声激励的常规系统识别方法不同,在旨在直接将它们用于语音分析的方法中,白噪声和周期性脉冲串激励都被考虑在内。在此基础上,提出了一种两阶段相关域ARMA系统识别方法。在第一阶段,将新模型与基于残差的最小二乘(RBLS)模型拟合优化算法结合使用,以估计AR参数。在第二阶段,根据残差信号估计移动平均(MA)参数,该残差信号是通过使用估计的AR参数对观测数据进行滤波而获得的。为了克服噪声对MA部分的不利影响,还提出了一种使用残差信号的逆自相关函数(IACF)的噪声补偿方案。倒谱分析在语音和生物医学信号处理中很流行。本文提出了几种倒谱域技术来识别嘈杂条件下的AR和ARMA系统。首先,提出了AR和ARMA信号的单方自相关函数(ACF)的斜倒谱模型,然后使用RBLS算法将其用于AR或ARMA系统的参数估计。结果表明,对于ARMA系统的MA参数的估计,可以采用基于直接斜谱倒谱模型拟合的方法或基于噪声补偿的方法。考虑到在真实信号的情况下,离散余弦变换在计算复杂度方面比傅立叶变换(FT)更具吸引力,因此还提出了一种斜坡余弦倒频谱模型来识别AR和ARMA系统。为了克服常规低阶Yule-Walker方法的局限性,提出了一种利用ACF低阶滞后的噪声补偿二次特征值方法来估计ARMA系统的AR参数以及噪声。方差。为了估计MA参数,采用了一种新的噪声补偿方法,其中使用了残留信号的所得噪声补偿后的ACF的频谱因子分解。;为了研究所提出的识别技术的有效性在嘈杂的条件下,通过考虑各种阶数的合成AR和ARMA系统来进行广泛的仿真。结果表明,即使在非常低的SNR水平下,所提出的技术也比某些现有方法具有明显的优越性。还提供了使用自然语音信号识别人声系统的仿真结果,显示了新技术的优越性能。;为说明拟议的AR和ARMA系统识别技术在语音分析中的应用,说明了噪声鲁棒方案用于估计共振峰频率的方法已经开发出来。使用新的共振峰估计方案测试了合成和自然音素,包括嘈杂环境中的一些自然口语句子。实验结果表明,在低SNR情况下,其性能优于某些最新方法。

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