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Convolutive Bounded Component Analysis Algorithms for Independent and Dependent Source Separation

机译:用于独立和相依源分离的卷积有界分量分析算法

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摘要

Bounded component analysis (BCA) is a framework that can be considered as a more general framework than independent component analysis (ICA) under the boundedness constraint on sources. Using this framework, it is possible to separate dependent as well as independent components from their mixtures. In this paper, as an extension of a recently introduced instantaneous BCA approach, we introduce a family of convolutive BCA criteria and corresponding algorithms. We prove that the global optima of the proposed criteria, under generic BCA assumptions, are equivalent to a set of perfect separators. The algorithms introduced in this paper are capable of separating not only the independent sources but also the sources that are dependent/correlated in both component (space) and sample (time) dimensions. Therefore, under the condition that the sources are bounded, they can be considered as extended convolutive ICA algorithms with additional dependent/correlated source separation capability. Furthermore, they have potential to provide improvement in separation performance, especially for short data records. This paper offers examples to illustrate the space-time correlated source separation capability through a copula distribution-based example. In addition, a frequency-selective Multiple Input Multiple Output equalization example demonstrates the clear performance advantage of the proposed BCA approach over the state-of-the-art ICA-based approaches in setups involving convolutive mixtures of digital communication sources.
机译:在源的有界约束下,有界成分分析(BCA)是一种比独立成分分析(ICA)更普遍的框架。使用此框架,有可能从其混合物中分离出相关成分和独立成分。在本文中,作为最近引入的即时BCA方法的扩展,我们介绍了一系列卷积BCA标准和相应的算法。我们证明,在通用BCA假设下,拟议标准的全局最优值等效于一组完美的分隔符。本文介绍的算法不仅能够分离独立的源,而且能够分离在分量(空间)和样本(时间)维上都是相关/相关的源。因此,在源有界的情况下,可以将它们视为具有附加的相关/相关源分离能力的扩展卷积ICA算法。此外,它们具有改善分离性能的潜力,尤其是对于短数据记录而言。本文提供了一些实例,通过基于copula分布的实例来说明时空相关源分离能力。此外,一个频率选择多输入多输出均衡示例证明了在涉及数字通信源的卷积混合的设置中,提出的BCA方法明显优于基于ICA的最新方法。

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