Signal modeling by exponential segments and application in voiced speech analysis

S. Parthasarathy, D. Tufts
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引用次数: 5

Abstract

The analysis of signals that can be represented as a linear combination of exponentially damped sinusoids where the values of damping factors, frequencies, and the linear combination coefficients change at certain transition times is considered. These transitions represent the opening and closing of the glottis in the case of speech signals. Techniques are presented for the accurate estimation of the exponential parameters and the times of transition, from noise corrupted observations of the signal. The exponential parameters are obtained by improved linear prediction techniques using low-rank approximations, and further refined by an iterative least-squares technique with stability constraints imposed on the damping factors. Optimal estimates (in the least-squares sense) of the time of transition are presented. Our knowledge of the signal structure is used to obtain improved performance and also a computationally efficient estimation algorithm. Experiments with real, connected speech indicate that the speech waveforms can be accurately represented from a small number of parameters using the analysis presented here.
指数分段信号建模及其在语音分析中的应用
对可以表示为指数阻尼正弦波的线性组合的信号进行分析,其中阻尼因子、频率和线性组合系数的值在一定的过渡时间内变化。在语音信号的情况下,这些转换代表声门的打开和关闭。提出了从噪声破坏的信号观测中准确估计指数参数和过渡时间的技术。指数参数采用改进的低秩近似线性预测技术获得,并通过对阻尼因子施加稳定性约束的迭代最小二乘技术进一步细化。给出了过渡时间的最优估计(在最小二乘意义上)。我们对信号结构的了解被用来获得更好的性能和计算效率高的估计算法。用真实的连通语音进行的实验表明,使用本文提出的分析方法可以从少量参数中准确地表示语音波形。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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