基于最小均方算法的音频信号自适应降噪

Arnav Mendiratta, D. Jha
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引用次数: 12

摘要

在过去的几年里,控制信号中噪声的方法吸引了许多研究者。其中一种方法是自适应噪声消除,它被提出用于减少稳态加性噪声。这种方法使用两个输入——主输入和参考输入。主输入接收来自信号源的信号,该信号源已被与信号不相关的噪声损坏。参考输入接收与该信号不相关但以某种方式与主输入中的噪声信号相关的噪声信号。参考输入被自适应滤波以获得主输入噪声的接近估计,然后从主输入的损坏信号中减去该噪声,产生一个干净的未损坏信号的估计,这是自适应噪声消除输出。通过将该输出反馈到自适应滤波器并实现最小均方算法以最小化输出功率,可以恢复被噪声破坏的期望信号。被噪声破坏的音频信号被用作主输入,噪声信号被用作参考输入。利用MATLAB进行了计算机仿真,并给出了实验结果,说明了自适应降噪技术的有效性。
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Adaptive Noise Cancelling for audio signals using Least Mean Square algorithm
The methods to controlling the noise in a signal have attracted many researchers over past few years. One such approach is Adaptive Noise Cancellation which has been proposed to reduce steady state additive noise. This method uses two inputs - primary and reference. The primary input receives signal from the signal source which has been corrupted with a noise uncorrelated to the signal. The reference input receives noise signal uncorrelated with the signal but correlated in some way to the noise signal in primary input. The reference input is adaptively filtered to obtain a close estimate of primary input noise which is then subtracted from the corrupted signal at the primary input to produce an estimate of a clean uncorrupted signal, which is the Adaptive Noise Cancellation output. A desired signal corrupted by noise can be recovered by feeding back this output to Adaptive Filter and implementing Least Mean Square algorithm to minimize output power. The audio signal corrupted with noise is used as a primary input and a noise signal is used as reference input. Computer simulations are carried out using MATLAB and experimental results are presented that illustrate the usefulness of Adaptive Noise Cancelling Technique.
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