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On the design of robust criteria and algorithms for blind source separation.

机译:关于盲源分离的鲁棒标准和算法的设计。

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摘要

Blind Source Separation (BSS) is a class of signal processing methods that recover a set of source signals from their linear mixtures with no or little prior knowledge of the source signals or mixing conditions. Independent Component Analysis (ICA) is a procedure for recovering a set of independent features from multichannel data that is often useful for BSS. In BSS and ICA, it is desirable to select a separation criterion that results in a simple algorithm and achieves accurate and robust source estimates.; Many procedures for BSS and ICA have been developed; two of the most-popular methods are the natural gradient algorithm and the FastICA algorithm of Hyvarinen and Oja. Both of these procedures rely on output nonlinearities for each extracted source to obtain separation. These nonlinearities are used to compute the updated demixing coefficients in the separation algorithm. The design of these nonlinearities is largely dependent on the distributions of the original source signals, and the design is often performed in an ad hoc manner without careful regard for the algorithm's behavior in many treatments of the problem. An important design consideration in these algorithms is the choice of nonlinearity used to obtain each estimated output.; In this dissertation, we review existing work in the area of BSS and ICA and present novel research results in the use of Huber's M-estimator cost function and piecewise linear function as contrast functions within the natural gradient and FastICA algorithm for separating various types of non-Gaussian sources.; The algorithms obtained from these cost functions are particularly simple to implement, as they involve only multiplies, adds, and threshold operations. We establish key properties regarding the local stabilities of the algorithms for general non-Gaussian source distributions, and their separating capabilities are shown through analysis to be largely insensitive to the cost function's threshold parameter.; In addition, we show that the Huber M-estimator cost function is able to separate large-scale and ill-conditioned signal mixtures with reduced data set requirements effectively. These key features are used for the blind source separation portion of the first Machine Learning for Signal Processing Workshop Data Analysis Competition and resulted in a winning algorithm for the competition. More significantly, the frequency domain FastICA algorithm with the Huber M-estimator cost is able to separate real-word speech mixtures and outperforms other algorithms based on other contrast costs.; Using the Huber M-Estimator cost with the natural gradient algorithm requires careful design of the threshold parameter. We show how the cost can be simply modified to produce a new cost involving piecewise linear functions that has improved stability monitoring properties, guaranteeing local stability with any source distribution through a nonlinearity sign change. Moreover, we show that the deviation of the output nonlinearity from a linear function for the FastICA algorithm can be extremely small, suggesting that simple output nonlinearities already in use, such as mu-law companding, is sufficiently nonlinear to allow separation with such algorithms.
机译:盲源分离(BSS)是一类信号处理方法,可以在没有或几乎没有先验知识的情况下从线性混合中恢复一组源信号。独立组件分析(ICA)是一种从多通道数据中恢复一组独立特征的过程,该数据通常对BSS有用。在BSS和ICA中,理想的是选择一种分离标准,以产生简单的算法并获得准确而可靠的源估计。已经开发了许多用于BSS和ICA的程序。最受欢迎的两种方法是自然梯度算法和Hyvarinen和Oja的FastICA算法。这两个过程都依赖于每个提取源的输出非线性以获得分离。这些非线性用于在分离算法中计算更新的解混系数。这些非线性的设计在很大程度上取决于原始源信号的分布,并且该设计通常以临时的方式执行,而在许多问题处理中并未仔细考虑算法的行为。这些算法中一个重要的设计考虑因素是选择用于获得每个估计输出的非线性。在本文中,我们回顾了BSS和ICA领域的现有工作,并提出了在自然梯度内使用Huber的M估计器成本函数和分段线性函数作为对比函数以及FastICA算法来分离各种类型非参数的新研究成果。 -高斯源。从这些成本函数获得的算法特别易于实现,因为它们仅涉及乘法,加法和阈值运算。我们建立了关于一般非高斯源分布算法局部稳定性的关键属性,并通过分析表明它们的分离能力对成本函数的阈值参数不敏感。此外,我们表明,Huber M估计器成本函数能够有效地分离大型和病态信号混合物,并减少数据集需求。这些关键功能被用于首个信号处理车间数据分析竞赛机器学习的盲源分离部分,并为竞赛赢得了成功的算法。更重要的是,具有Huber M估计器成本的频域FastICA算法能够分离实词语音混合,并基于其他对比成本优于其他算法。将Huber M-Estimator成本与自然梯度算法一起使用需要对阈值参数进行仔细设计。我们展示了如何简单地修改成本以产生涉及分段线性函数的新成本,该分段线性函数具有改进的稳定性监视属性,通过非线性符号变化来保证任何源分布的局部稳定性。此外,我们显示出FastICA算法的输出非线性与线性函数的偏差可能非常小,这表明已在使用的简单输出非线性(例如mu-law压扩)足够非线性以允许与此类算法分离。

著录项

  • 作者

    Chao, Jih-Cheng.;

  • 作者单位

    Southern Methodist University.$bElectrical Engineering.;

  • 授予单位 Southern Methodist University.$bElectrical Engineering.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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