Extraction of spectral peak parameters using a short-time Fourier transform modeling and no sidelobe windows

P. Depalle, Thomas Hélie
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引用次数: 66

Abstract

A new method which improves the estimation of frequency, amplitude and phase of the partials of a sound is presented. It allows the reduction of the analysis-window size from four periods to two periods. It therefore gives better accuracy in parameter determination, and has proved to remain efficient at low signal-to-noise ratios. The basic idea consists of using a parametric modeling of the short-time Fourier transform. The method alternately estimates the complex amplitudes and the frequencies starting from the result of the classical analysis method. It uses the least-square procedure and a first-order limited expansion of the model around previous estimations. This method leads us to design new windows which do not have any sidelobes in order to help the convergence. Finally an analysis algorithm which has been built according to the observed behavior of the method for various kinds of sound is presented.
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利用短时傅里叶变换建模和无旁瓣窗提取谱峰参数
提出了一种改进声音偏频、幅值和相位估计的新方法。它允许将分析窗口大小从四个周期减少到两个周期。因此,它在参数确定方面具有更好的准确性,并且已被证明在低信噪比下仍然有效。其基本思想是使用短时傅里叶变换的参数化建模。该方法从经典分析方法的结果出发,交替估计复振幅和频率。它使用最小二乘过程和围绕先前估计的模型的一阶有限展开。这种方法导致我们设计没有任何副瓣的新窗口,以帮助收敛。最后,根据该方法对各种声音的观测行为,建立了一种分析算法。
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