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A RECURSIVE LEAST-SQUARES EXTENSION OF THE NATURAL GRADIENT ALGORITHM FOR BLIND SIGNAL SEPARATION OF AUDIO MIXTURES

机译:混合音频盲信号分离的自然梯度算法的递推最小二乘扩展

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摘要

Blind Signal Separation (BSS) refers to the operation of recovering a set of sources that are as independent as possible from another set of observed linear or non-linear mixtures. The term blind indicates that this operation is done -without knowing the mixing coefficients. Although this problem is more difficult than the classical filtering problem, a solution is still feasible provided that some information about the original independent components is provided. Major attention in the literature has been focused on different criteria to be used as objective functions for BSS. However, most of the existing on-line methods can be categorized as using a stochastic gradient. The need for second-order based algorithms for BSS can be easily revealed, as the fast convergence rate of the Recursive-Least-Squares (RLS) based algorithms can be advantageous for many applications. Among the many existing objective functions for Blind Signal Separation, Maximum Likelihood and Negentropy stand as strong criteria which are well justified, as they minimize the mutual information between the original independent components [1],[2]. Maximum likelihood proved especially suitable for heavy tailed distribution signals, such as audio data [3].
机译:盲信号分离(BSS)是指恢复与另一组观察到的线性或非线性混合物尽可能独立的源的操作。术语“盲”表示在不知道混合系数的情况下完成了此操作。尽管此问题比经典的过滤问题更困难,但只要提供有关原始独立组件的某些信息,解决方案仍然可行。文献中的主要注意力集中在用作BSS目标功能的不同标准上。但是,大多数现有的在线方法可以归类为使用随机梯度。由于基于递归最小二乘(RLS)的算法的快速收敛速率对于许多应用可能是有利的,因此可以轻松地揭示出对BSS基于二阶算法的需求。在许多现有的用于盲信号分离的目标函数中,最大似然和负熵是合理的强标准,因为它们使原始独立分量之间的相互信息最小化[1],[2]。事实证明,最大似然特别适合于重尾分布信号,例如音频数据[3]。

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