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Maximization of Nonlinear Autocorrelation for Blind Source Separation of Non-stationary Complex Signals

机译:非平稳复信号盲源分离的非线性自相关最大化

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摘要

Blind source separation of complex-valued signals has been a vital issue especially in the field of digital communication signal processing. This paper proposes a novel method based on nonlinear autocorrelation to solve the problem. Relying on the temporal structure with nonlinear autocorrelation of the signals, the method has a potential capability of extracting non-stationary complex sources with Gaussian or non-Gaussian distribution. Most traditional methods would fail in separating this kind of sources. We also analyze the stability conditions of the method in theory. Numerical simulations on artificial complex Gaussian data and orthogonal frequency division multiplexing sources corroborate the validity and efficiency of the proposed method. Moreover, with respect to classical methods, including cumulant-based approach using the non-stationarity of variance and complexity pursuit, our method offers equally good results with lower computational cost and better robustness. Finally, experiments for the separation of real communication signals illustrate that our method has good prospects in real-world applications.
机译:复数值信号的盲源分离一直是至关重要的问题,尤其是在数字通信信号处理领域。本文提出了一种基于非线性自相关的新方法来解决该问题。依靠信号的非线性自相关的时间结构,该方法具有提取具有高斯或非高斯分布的非平稳复杂源的潜在能力。大多数传统方法都无法分离此类来源。我们还从理论上分析了该方法的稳定性条件。人工复杂的高斯数据和正交频分复用源的数值模拟证实了该方法的有效性和有效性。此外,相对于经典方法,包括使用方差非平稳性和复杂度追求的基于累积量的方法,我们的方法提供了同样好的结果,但具有较低的计算成本和更好的鲁棒性。最后,分离真实通信信号的实验表明,我们的方法在实际应用中具有良好的前景。

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