基于同态滤波与非线性傅立叶谱减法相结合的乘性消噪新方法

Guang Chen, Z. Ren, Zhang Tao, Changcun Sun
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引用次数: 0

摘要

当乘性噪声的频谱与真信号的频谱重叠时,采用同态滤波方法去噪效果较差。分析了傅里叶谱减法的原理,提出了一种基于同态滤波和傅里叶谱减法的乘性消噪新方法。首先用同态变换将乘性噪声变换为加性噪声,然后用非线性傅立叶谱减法在频域上减去噪声的频谱,最后通过离散傅立叶反变换、线性滤波和指数变换得到原始信号。仿真实验结果表明,与同态滤波相比,该方法的输出信号更接近真实信号,输出信号的信噪比显著提高,是一种更有效的消除乘性噪声的方法。
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A New Multiplicative Noise Elimination Method Based on Combining Homomorphic Filtering with Nonlinear Fourier Spectral Subtraction
When the spectrum of multiplicative noise is overlapped with the spectrum of the true signal, the effect of noise elimination is bad using homomorphic filtering method. The principle of Fourier spectral subtraction is analyzed, and a new method of multiplicative noise elimination based on homomorphic filtering and Fourier spectral subtraction is proposed. Firstly transform the Multiplicative noise into additive noise by means of homomorphic transform, then subtract the spectrum of noise in frequency domain using nonlinear Fourier spectral subtraction, finally get the original signal through inverse discrete Fourier transform, linear filtering and exponential transform. The results of simulation experiment show that, compared with homomorphic filtering, the output signal with this method is more likely to the real signal, and SNR(Signal to Noise Ratio) of output signal is improved remarkably, so it is a more effective method to eliminate the multiplicative noise.
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