盲源提取的定性性能分析

W. Y. Leong
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引用次数: 0

摘要

在盲源分离中,已经提出了几种技术来说明分离算法的定性性能。但一般情况下,我们假设条件理想,无噪声,线性混合模型。本文讨论了一些重要的性能分析。结果表明,在噪声和非线性情况下,混/脱混矩阵的估计不应该是主要目标。相反,我们建议比较不同性能技术的ICA算法的结果,这些技术是针对已知的混合模型推导出来的,并扩展到现实世界的数据。在这项工作中,延迟方差矢量被建议作为有意义的性能标准。仿真研究比较了几种著名的ICA算法和应用于噪声数据的性能技术。盲源分离,盲源提取,性能分析,噪声混合
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Qualitative performance analysis of blind source extraction
In blind source separation, several techniques have been proposed to illustrate the qualitative performance of separation algorithms. However, in general, we assume ideal condition, no noise and linear mixing model. In this paper, a number of important performance analyses are discussed. It is shown that estimation of the mixing/demixing matrix should not be the main goal, in the noisy and nonlinear case. Instead, it is proposed to compare outcome of ICA algorithms with different proposed performance techniques, derived for known mixing model and extended to real- world data. In this work, the delay variance vector is suggested as the meaningful performance criterion. A simulation study that compare a few well known ICA algorithms and performance techniques applied to noise data are included. Blind source separation, blind source extraction, performance analysis, noisy mixtures
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