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Analysis of the Stereophonic LMS/Newton Algorithm and Impact of Signal Nonlinearity on Its Convergence Behavior

机译:立体声LMS /牛顿算法的分析以及信号非线性对其收敛行为的影响

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The strong cross-correlation that exists between the two input audio channels makes the problem of stereophonic acoustic echo cancellation (AEC) complex and challenging to solve. Recently, two new implementations of the LMS/Newton algorithm that uses a linear decorrelation technique were proposed. This method helps to mitigate the effect of the ill-conditioned problem on the convergence rate of the LMS/Newton adaptive algorithm. The complexity of these algorithms is significantly lower than the recursive least-squares (RLS) algorithm, which is known to provide excellent echo cancellation. Furthermore, unlike the various versions of the RLS algorithm, the LMS/Newton algorithm is more robust to numerical errors. It has also been suggested that applying nonlinearities to signals at the two audio channels will help to alleviate the misalignment problem of stereophonic AEC systems. Simulation studies reveal that application of certain classes of nonlinearities to the two-channel LMS/Newton algorithms helps to further reduce the misalignment but it also leads to an unexpected and significant reduction in the rate of convergence of the mean-square error. The contributions of this paper are twofold. First, we provide an analysis of the two-channel LMS/Newton algorithm that was proposed in our earlier work. Second, we provide a theoretical understanding for the appearance of the slow modes of convergence in the presence of nonlinearities and show that they can be resolved through a preprocessing step.
机译:两个输入音频通道之间存在很强的互相关性,使立体声回声消除(AEC)问题变得复杂且难以解决。最近,提出了使用线性去相关技术的LMS / Newton算法的两个新实现。该方法有助于减轻病态问题对LMS / Newton自适应算法收敛速度的影响。这些算法的复杂度显着低于递归最小二乘(RLS)算法,后者可提供出色的回声消除。此外,与RLS算法的各种版本不同,LMS / Newton算法对数值误差更健壮。还建议将非线性应用于两个音频通道的信号将有助于减轻立体声AEC系统的失准问题。仿真研究表明,将某些类别的非线性应用于两通道LMS / Newton算法有助于进一步减少失准,但同时也会导致均方误差收敛速度的意外和显着降低。本文的贡献是双重的。首先,我们提供对我们早先工作中提出的两通道LMS / Newton算法的分析。其次,我们对存在非线性的慢速收敛模式的出现提供了理论上的理解,并表明可以通过预处理步骤解决它们。

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