论文标题

基于独立矢量分析的统一贝叶斯对空间知情的源分离和提取的看法

A Unified Bayesian View on Spatially Informed Source Separation and Extraction based on Independent Vector Analysis

论文作者

Brendel, Andreas, Haubner, Thomas, Kellermann, Walter

论文摘要

信号分离和提取是在真实环境中记录音频信号的设备的重要任务,除了所需的来源外,通常还包含多个干扰源,例如背景噪声或并发扬声器。盲目分离(BSS)提供了一种有力解决此类问题的强大方法。但是,BSS算法通常平等处理所有来源,并且在算法的输出(即外部置换问题)处的分离信号的排序无法解决不确定性。本文通过将先验知识纳入贝叶斯框架中的来源的位置(例如,来源的位置)来解决此问题。我们在这里专注于基于独立向量分析(IVA)的方法,因为它优雅而成功地处理了内部排列问题。通过包括一个背景模型,即我们不感兴趣的来源模型,我们使算法能够在低计算复杂性下提取过度确定和不确定的方案中感兴趣的来源。所提出的框架允许以通用方式合并有关混合过滤器的先验知识,并使用贝叶斯视图统一了几种已知和新提出的算法。对于所有算法变体,我们根据迭代投影原理提供有效的更新规则。使用测量的房间脉冲响应比较了多种代表性算法变体的性能,包括最近的算法。

Signal separation and extraction are important tasks for devices recording audio signals in real environments which, aside from the desired sources, often contain several interfering sources such as background noise or concurrent speakers. Blind Source Separation (BSS) provides a powerful approach to address such problems. However, BSS algorithms typically treat all sources equally and do not resolve uncertainty regarding the ordering of the separated signals at the output of the algorithm, i.e., the outer permutation problem. This paper addresses this problem by incorporating prior knowledge into the adaptation of the demixing filters, e.g., the position of the sources, in a Bayesian framework. We focus here on methods based on Independent Vector Analysis (IVA) as it elegantly and successfully deals with the internal permutation problem. By including a background model, i.e., a model for sources we are not interested to separate, we enable the algorithm to extract the sources of interest in overdetermined and underdetermined scenarios at a low computational complexity. The proposed framework allows to incorporate prior knowledge about the demixing filters in a generic way and unifies several known and newly proposed algorithms using a Bayesian view. For all algorithmic variants, we provide efficient update rules based on the iterative projection principle. The performance of a large variety of representative algorithmic variants, including very recent algorithms, is compared using measured room impulse responses.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源