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An unbiased risk estimator for Gaussian mixture noise distributions ??? Application to speech denoising

机译:高斯混合噪声分布的无偏风险估计器???在语音去噪中的应用

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We develop an unbiased estimate of mean-squared error (MSE), where the observations are assumed to be drawn from a Gaussian mixture (GM) distribution. Stein's unbiased risk estimate (SURE) is an unbiased estimate of the MSE, and was originally proposed for independent and identically distributed (i.i.d.) multivariate Gaussian observations. Subsequently, it was extended to the exponential family of distributions. In this paper, we extend the idea of SURE to observations drawn from a Gaussian mixture distribution (GMD). Since Gaussian mixture models (GMM) can model any given distribution sufficiently accurately, this generalized framework allows us to apply the SURE technique to the observations drawn from an arbitrary distribution. As an application, we consider the problem of denoising speech corrupted by a GM distributed noise. It is observed that the denoising performance of the algorithm developed using SURE based on GMD is superior in terms of the signal-to-noise ratio (SNR) and average segmental SNR (ASSNR), compared with that obtained using SURE based on the single Gaussian assumption.
机译:我们开发了对平均平均误差(MSE)的无偏见估计,其中假设观察结果从高斯混合物(GM)分布中。 Stein的无偏见风险估计(肯定)是对MSE的无偏见估计,最初提出独立和相同分布的(I.I.D.)多变量高斯观察。随后,它扩展到指数的分布。在本文中,我们肯定地扩展了从高斯混合分布(GMD)中汲取的观察的想法。由于高斯混合模型(GMM)可以充分准确地模拟任何给定的分布,因此该广义框架允许我们将果断技术应用于从任意分布中汲取的观察结果。作为申请,我们考虑到转基因分布式噪声损坏的言论损坏的问题。据指出,基于GMD基于GMD的算法开发的算法的去噪性能在信噪比(SNR)和平均分段SNR(ASSNR)方面是优越的,与使用基于单个高斯获得的相比假设。

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