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首页> 外文期刊>IEEE Transactions on Speech and Audio Proceeding >Modified LMS algorithms for speech processing with an adaptive noise canceller
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Modified LMS algorithms for speech processing with an adaptive noise canceller

机译:带有自适应噪声消除器的语音处理的改进LMS算法

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摘要

A desired signal corrupted by additive noise can often be recovered by an adaptive noise canceller using the least mean squares (LMS) algorithm. A major disadvantage of the LMS algorithm is its excess mean-squared error, or misadjustment, which increases linearly with the desired signal power, This leads to degrading performance when the desired signal exhibits large power fluctuations and is a serious problem in many speech processing applications. This work considers two modified LMS algorithms, the weighted sum and sum methods, designed to solve this problem by reducing the size of the steps in the weight update equation when the desired signal is strong. The weighted sum method is derived from an optimal method (also developed in this work), which is not generally applicable because it requires quantities unavailable in a practical system. The previously proposed, but ad hoc, sum method is analyzed and compared to the weighted sum method. Analysis of the two modified LMS algorithms indicates that either one provides substantial improvements in the presence of strong desired signals and similar performance in the presence of weak desired signals, relative to the unmodified LMS algorithm. Computer simulations with both uncorrelated Gaussian noise and speech signals confirm the results of the analysis and demonstrate the effectiveness of the modified algorithms. The modified LMS algorithms are particularly suited for signals (such as speech) that exhibit large fluctuations in short-time power levels.
机译:由加性噪声破坏的期望信号通常可以由自适应噪声消除器使用最小均方(LMS)算法来恢复。 LMS算法的主要缺点是其均方误差过大或失调,随所需信号功率线性增加。当所需信号表现出较大的功率波动时,这会导致性能下降,这在许多语音处理应用中是一个严重的问题。这项工作考虑了两种改进的LMS算法:加权和和和方法,旨在通过在所需信号较强时减小权重更新方程中的步长来解决此问题。加权和方法是从最佳方法(也是在本工作中开发的)派生而来的,该方法通常不适用,因为它需要实际系统中没有的数量。分析了先前提出但临时的求和方法,并将其与加权和方法进行了比较。对这两种修改后的LMS算法的分析表明,相对于未经修改的LMS算法,在强期望信号的存在下,任一种都可以提供实质性的改进,而在弱期望信号的存在下,二者可以提供类似的性能。不相关的高斯噪声和语音信号的计算机仿真证实了分析的结果,并证明了改进算法的有效性。修改后的LMS算法特别适用于在短时功率水平上出现较大波动的信号(例如语音)。

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