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ML estimation of memoryless nonlinear distortions in audio signals

机译:音频信号中无记忆非线性失真的ML估计

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Many real-world signals are subjected to nonlinear distortions that can be approximately modeled as memoryless and invertible. In Audio applications, they are typical of magnetic recordings but can also result of dynamic compression employed in vinyl recordings etc. Such an effect can be disturbing to a modern audience which is used to higher quality material. This paper proposes an iterative algorithm to maximize the likelihood function of the distortion function parameters, based solely on samples of the degraded signal, and then recover the original signal. The method assumes the original signal to be autoregressive and Gaussian in short sections — a standard model for audio — and the nonlinearity to be timeinvariant throughout the signal, thus allowing the use of all samples in the model estimation. Additionally, a simple and time-efficient alternative technique to estimate the nonlinear function is proposed; it can be used either as a fast and reliable stand-alone procedure or as a initialization routine for the more sophisticated maximum likelihood approach. The robustness of the proposed techniques is verified through application to artificial and real signals nonlinearly distorted.
机译:许多现实世界中的信号都受到非线性失真的影响,可以将其近似建模为无记忆和可逆的。在音频应用中,它们是磁性录音的典型代表,但也可能是乙烯基录音等中采用动态压缩的结果。这种效果可能会干扰习惯于使用更高品质材料的现代听众。本文提出了一种迭代算法,可以仅基于降级信号的样本来最大化失真函数参数的似然函数,然后恢复原始信号。该方法假定原始信号在短时间内是自回归的,并且是高斯模型(音频的标准模型),并且非线性在整个信号中是随时间变化的,因此可以在模型估计中使用所有样本。此外,提出了一种简单,省时的替代技术来估计非线性函数。它既可以用作快速可靠的独立过程,也可以用作更复杂的最大似然方法的初始化例程。通过应用于非线性失真的人工和真实信号,验证了所提出技术的鲁棒性。

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