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A variational Bayesian approach to number of sources estimation for multichannel blind deconvolution - Springer

机译:变分贝叶斯方法估计多通道盲反卷积源数-Springer

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摘要

Most traditional multichannel blind deconvolution algorithms rely on some assumptions on the mixing model, e.g. the number of sources is known a priori; and the mixing environment is noise-free. Unfortunately, these assumptions are not necessarily true in practice. In this paper, we will relax the assumption placed on the number of sources by studying a state space mixing model where the number of sources is assumed to be unknown but not greater than the number of sensors. Based on this mixing model, we will formulate the estimation of the number of sources problem as a model order selection problem. Model comparison, as a common method of model order selection, usually involves the evaluation of multi-variable integrals which is computationally intractable. A variational Bayesian method is therefore used to overcome this multi-variable integral issue. The problem is solved by approximating the true, complicated posteriors with a set of independent, simple, tractable posteriors. To realize the objective of optimal approximation, we maximize an objective function called negative free energy. We will derive a variational Bayesian algorithm, in which the number of sources will be estimated through two approaches: automatic relevance determination and comparison of the optimized negative free energy. The proposed variational Bayesian algorithm will be evaluated on both artificially generated examples, and practical signals.
机译:大多数传统的多通道盲解卷积算法都依赖于混合模型的一些假设,例如先验已知来源的数量;混合环境无噪音。不幸的是,这些假设在实践中不一定是正确的。在本文中,我们将通过研究状态空间混合模型来放宽对源数量的假设,在状态空间混合模型中,假定源数量未知但不大于传感器数量。在此混合模型的基础上,我们将源数量问题的估计公式化为模型订单选择问题。作为模型顺序选择的一种常用方法,模型比较通常涉及对在计算上难以处理的多变量积分的评估。因此,使用变分贝叶斯方法来克服该多变量积分问题。通过用一组独立的,简单的,易于处理的后代近似真实,复杂的后代来解决该问题。为了实现最佳逼近的目标,我们最大化了一个称为负自由能的目标函数。我们将推导变分贝叶斯算法,其中将通过两种方法来估计源的数量:自动相关性确定和最佳负自由能的比较。拟议的变分贝叶斯算法将在人工生成的示例和实际信号上进行评估。

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