时变卷积多通道系统的无监督贝叶斯估计与跟踪

H. Buchner, Karim Helwani, S. Godsill
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引用次数: 1

摘要

本文重点研究了基于宽带MIMO FIR模型的贝叶斯盲和半盲自适应信号处理(例如,盲源分离(BSS)和盲系统识别(BSI))。具体来说,我们在本文中研究了一个框架,允许我们系统地合并各种类型的先验知识:(1)源信号统计,(2)混合系统的确定性知识,(3)混合系统的随机知识。为了利用所有可能的源信号统计类型(1),我们的考虑基于TRINICON,这是先前介绍的用于宽带盲(和半盲)自适应MIMO信号处理的通用框架。本文的动机有三个:(a)将TRINICON扩展到贝叶斯点估计,以解决(3)和(1)之外的(3),(b)更具体地将基于系统的盲自适应MIMO信号处理与时变场景的跟踪统一起来,最后(c)展示如何将基于贝叶斯TRINICON的跟踪表述为任意部分光滑流形上的序列估计方法。正如我们将在本文中看到的,在TRINICON的背景下,结合随机先验的贝叶斯方法和利用确定性系统知识的流形学习方法(2)非常有效地相互补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Bayesian Estimation and Tracking of Time-Varying Convolutive Multichannel Systems
In this paper we focus on Bayesian blind and semi-blind adaptive signal processing based on a broadband MIMO FIR model (e.g., for blind source separation (BSS) and blind system identification (BSI)). Specifically, we study in this paper a framework allowing us to systematically incorporate various types of prior knowledge: (1) source signal statistics, (2) deterministic knowledge on the mixing system, and (3) stochastic knowledge on the mixing system. In order to exploit all possible types of source signal statistics (1), our considerations are based on TRINICON, a previously introduced generic framework for broadband blind (and semi-blind) adaptive MIMO signal processing. The motivation for this paper is threefold: (a) the extension of TRINICON to Bayesian point estimation to address (3) in addition to (1), and (b) more specifically to unify system-based blind adaptive MIMO signal processing with the tracking of time-varying scenarios, and finally (c) to show how the Bayesian TRINICON-based tracking can be formulated as a sequence estimation approach on arbitrary partly smooth manifolds. As we will see in this paper, the Bayesian approach to incorporate stochastic priors and the manifold learning approach to exploit deterministic system knowledge (2) complement one another very efficiently in the context of TRINICON.
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