A Voice Signal Filtering Methods for Speaker Biometric Identification

E. Fedorov, T. Utkina, Tetyana Neskorodeva
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Abstract

The preliminary stage of the personality biometric identification on a voice is voice signal filtering. For biometric identification are considered and in number investigated the following methods of noise suppression in a voice signal. The smoothing adaptive linear time filtering (algorithm of the minimum root mean square error, an algorithm of recursive least squares, an algorithm of Kalman filtering, a Lee algorithm), the smoothing adaptive linear frequency filtering (the generalized method, the MLEE (maximum likelihood envelope estimation) method, a wavelet analysis with threshold processing (universal threshold, SURE (Stein’s Unbiased Risk Estimator)-threshold, minimax threshold, FDR (False Discovery Rate)-threshold, Bayesian threshold were used), the smoothing non-adaptive linear time filtering (the arithmetic mean filter, the normalized Gauss’s filter, the normalized binomial filter), the smoothing nonlinear filtering (geometric mean filter, the harmonic mean filter, the contraharmonic filter, the α-trimmed mean filter, the median filter, the rank filter, the midpoint filter, the conservative filter, the morphological filter). Results of a numerical research of denoising methods for voice signals people from the TIMIT (Texas Instruments and Massachusetts Institute of Technology) database which were noise an additive Gaussian noise and multiplicative Gaussian noise were received.
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一种用于说话人生物识别的语音信号滤波方法
对语音进行个性生物识别的第一步是对语音信号进行滤波。对于生物特征识别,考虑并大量研究了语音信号中的噪声抑制方法。平滑自适应线性时间滤波(最小均方根误差算法、递推最小二乘算法、卡尔曼滤波算法、李算法)、平滑自适应线性频率滤波(广义方法、最大似然包膜估计方法、带阈值处理的小波分析(通用阈值、SURE (Stein’s Unbiased Risk Estimator)-阈值、minimax阈值、FDR (False Discovery Rate)-阈值)、采用贝叶斯阈值法)、平滑非自适应线性时间滤波(算术均值滤波、归一化高斯滤波、归一化二项滤波)、平滑非线性滤波(几何均值滤波、谐波均值滤波、反谐波滤波、α-均值滤波、中值滤波、秩滤波器、中点滤波器、保守滤波器、形态滤波器)。对来自美国德州仪器和麻省理工学院数据库的语音信号分别为加性高斯噪声和乘性高斯噪声进行了去噪方法的数值研究。
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