谱噪声估计:最小统计估计的Python 3实现

N. Bello, K. Ogbeide
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引用次数: 0

摘要

噪声估计主要应用于图像处理和语音识别。因此,研究人员已经找到了非平稳噪声估计的最优解。特别地,提出了一种基于两个观测值估计噪声语音信号中的频谱噪声的方法;语音停顿和在语音停顿期间噪声信号的功率谱密度对真实噪声的逼近。虽然从最近的研究中,所获得的观察结果无法对其他类型的信号,特别是射频信号进行推断,也没有在频域上对信号进行测试,但本文弥补了这一研究空白,并通过在频域上扩展所提出的方法,对射频信号的噪声估计结果进行了分析和结论。给出了在python 3代码中实现噪声估计最小统计方法的详细方法,该方法在射频信号中进行了测试,从而满足了频谱占用测量动态阈值的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral Noise Estimation: A Python 3 Implementation of the Minimum Statistics Estimation
Noise estimation has been used majorly in imaging processing and voice speech recognition applications. Therefore, researchers have found optimal solutions to non-stationary noise estimation. Particularly, there is a proposed method that estimates spectral noise in a noisy speech signal which is based on two observations; speech pauses and approximation of power spectral densities of the noisy signal to the true noise during speech pauses. Though from recent studies, the observations obtained cannot be inferred for other types of signals especially RF signals and have not been tested on signals in the frequency domain, this paper bridges that gap of research and presents the results, analysis, and conclusion on the findings concerning the noise estimation with RF signals using an extension of the proposed method in the frequency domain. It presents a detailed methodology of implementation of the minimum statistics method for noise estimation in python 3 code which was tested with RF signals and thus met the requirement of dynamic thresholding with spectrum occupancy measurement.
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