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Bayesian Estimation of Clean Speech Spectral Coefficients Given a Priori Knowledge of the Phase

机译:给定相位先验知识,干净语音频谱系数的贝叶斯估计

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摘要

While most short-time discrete Fourier transform-based single-channel speech enhancement algorithms only modify the noisy spectral amplitude, in recent years the interest in phase processing has increased in the field. The goal of this paper is twofold. First, we derive Bayesian probability density functions and estimators for the clean speech phase when different amounts of prior knowledge about the speech and noise amplitudes is given. Second, we derive a joint Bayesian estimator of the clean speech amplitudes and phases, when uncertain a priori knowledge on the phase is available. Instrumental measures predict that by incorporating uncertain prior information of the phase, the quality and intelligibility of processed speech can be improved both over traditional phase insensitive approaches, and approaches that treat prior information on the phase as deterministic.
机译:尽管大多数基于短时离散傅立叶变换的单通道语音增强算法仅修改噪声频谱幅度,但近年来,在该领域中对相位处理的兴趣有所增加。本文的目标是双重的。首先,当给出关于语音和噪声幅度的不同先验知识量时,我们得出干净语音阶段的贝叶斯概率密度函数和估计量。其次,当不确定相位的先验知识可用时,我们推导出干净语音幅度和相位的联合贝叶斯估计器。仪器测量结果表明,通过合并不确定的先验信息,经过处理的语音的质量和清晰度可以通过传统的对相位不敏感的方法以及将先验信息视为确定性的方法来提高。

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