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Generic Uniqueness of a Structured Matrix Factorization and Applications in Blind Source Separation

机译:结构化矩阵分解的通用唯一性及其在盲源分离中的应用

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摘要

Algebraic geometry, although little explored in signal processing, provides tools that are very convenient for investigating generic properties in a wide range of applications. Generic properties are properties that hold “almost everywhere.” We present a set of conditions that are sufficient for demonstrating the generic uniqueness of a certain structured matrix factorization. This set of conditions may be used as a checklist for generic uniqueness in different settings. We discuss two particular applications in detail. We provide a relaxed generic uniqueness condition for joint matrix diagonalization that is relevant for independent component analysis in the underdetermined case. We present generic uniqueness conditions for a recently proposed class of deterministic blind source separation methods that rely on mild source models. For the interested reader, we provide some intuition on how the results are connected to their algebraic geometric roots.
机译:代数几何虽然在信号处理中很少探索,但它提供了非常方便的工具来研究广泛应用中的通用属性。通用属性是“几乎无处不在”的属性。我们提出了一组条件,足以证明某个结构化矩阵分解的通用唯一性。这组条件可以用作不同设置中通用唯一性的清单。我们将详细讨论两个特定的应用程序。我们为联合矩阵对角化提供了一个宽松的通用唯一性条件,该条件与不确定情况下的独立成分分析有关。我们为依赖温和源模型的最近提出的一类确定性盲源分离方法提供了通用唯一性条件。对于感兴趣的读者,我们提供一些关于结果如何与其代数几何根联系的直觉。

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