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首页> 外文期刊>EURASIP journal on advances in signal processing >Fixed-Point Algorithms for the Blind Separation of Arbitrary Complex-Valued Non-Gaussian Signal Mixtures
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Fixed-Point Algorithms for the Blind Separation of Arbitrary Complex-Valued Non-Gaussian Signal Mixtures

机译:任意复数值非高斯信号混合盲分离的定点算法

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摘要

We derive new fixed-point algorithms for the blind separation of complex-valued mixtures of independent, noncircularly symmetric, and non-Gaussian source signals. Leveraging recently developed results on the separability of complex-valued signal mixtures, we systematically construct iterative procedures on a kurtosis-based contrast whose evolutionary characteristics are identical to those of the FastICA algorithm of Hyvarinen and Oja in the real-valued mixture case. Thus, our methods inherit the fast convergence properties, computational simplicity, and ease of use of the FastICA algorithm while at the same time extending this class of techniques to complex signal mixtures. For extracting multiple sources, symmetric and asymmetric signal deflation procedures can be employed. Simulations for both noiseless and noisy mixtures indicate that the proposed algorithms have superior finite-sample performance in data-starved scenarios as compared to existing complex ICA methods while performing about as well as the best of these techniques for larger data-record lengths.
机译:我们导出了新的定点算法,用于独立,非圆对称和非高斯源信号的复数值混合的盲分离。利用最近开发的关于复数值信号混合物可分离性的结果,我们在基于峰度的对比度上系统地构造了迭代过程,其演化特征与Hyvarinen和Oja的FastICA算法在实值混合情况下相同。因此,我们的方法继承了FastICA算法的快速收敛特性,计算简单性和易用性,同时将此类技术扩展到复杂的信号混合。为了提取多个源,可以采用对称和不对称的信号放气程序。对无噪声和嘈杂混合物的仿真表明,与现有的复杂ICA方法相比,在数据匮乏的情况下,所提出的算法具有出色的有限样本性能,而对于较大的数据记录长度,这些算法的性能也达到了最佳水平。

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