一种新的确定性大规模盲源分离方法

Martijn Boussé, Otto Debals, L. D. Lathauwer
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引用次数: 6

摘要

提出了一种新的确定性盲源分离方法。与独立分量分析等常用方法相比,仅对来源施加温和的假设。相反,该方法利用了混合向量的假设(近似)本征低秩结构。对于许多传感器的问题,这是一个非常自然的假设。因此,盲源分离问题可以重新表述为张量分解的计算,通过对张化混合向量应用低秩近似。这允许在某些大数据应用中引入盲源分离,这是其他方法无法做到的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel deterministic method for large-scale blind source separation
A novel deterministic method for blind source separation is presented. In contrast to common methods such as independent component analysis, only mild assumptions are imposed on the sources. On the contrary, the method exploits a hypothesized (approximate) intrinsic low-rank structure of the mixing vectors. This is a very natural assumption for problems with many sensors. As such, the blind source separation problem can be reformulated as the computation of a tensor decomposition by applying a low-rank approximation to the tensorized mixing vectors. This allows the introduction of blind source separation in certain big data applications, where other methods fall short.
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