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首页> 外文期刊>Signal processing >The shifted inverse-gamma model for noise-floor estimation in archived audio recordings
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The shifted inverse-gamma model for noise-floor estimation in archived audio recordings

机译:移位的反伽马模型,用于存档音频录音中的本底噪声估计

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摘要

In this paper a new model for audio signals in additive noise is presented in a time-frequency formulation. It is assumed that signal and noise coefficients are both complex Gaussian random variables, but that the (unknown) variance of the signal component is scaled relative to the (also unknown) noise variance. Under this assumption we find that an appropriate prior distribution for the unknown scaiings of signal coefficient variances relative to noise variance can be specified in terms of a shifted inverse-gamma distribution, Incorporating this prior distribution into a Bayesian model, the marginal conditional distribution for the noise variance may be computed in closed form using just tabulated values of the incomplete gamma function, which is readily available in mathematical programming languages. We test our method using both simulated and real noise environments, demonstrating successful and promising results under quite challenging conditions.
机译:在本文中,以时频公式提出了一种新的附加噪声音频信号模型。假设信号和噪声系数都是复数的高斯随机变量,但是信号分量的(未知)方差相对于(也是未知)噪声方差是按比例缩放的。在此假设下,我们发现可以根据移位的逆伽马分布来指定信号系数方差相对于噪声方差的未知范围的适当先验分布,将该先验分布合并到贝叶斯模型中,可以仅使用不完整伽玛函数的列表值以封闭形式计算噪声方差,这可以在数学编程语言中轻松获得。我们在模拟和真实噪声环境下测试了我们的方法,证明了在极具挑战性的条件下成功和有希望的结果。

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