变分绞杀扩展到多测量向量模型

Sofie Therese Hansen, Carsten Stahlhut, L. K. Hansen
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引用次数: 6

摘要

(08/12/2018)将变分Garrote扩展为多测量向量模型是本文研究的重点。我们提出了Kappen(2011)最初提出的变分绞喉的扩展版本,它可以使用多个测量向量(mmv)来进一步提高源检索性能。我们展示了它与原始公式相比的优越性,并证明了它能够正确估计源的位置和大小。最后证明了该算法与其他MMV模型相比具有较高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expansion of the Variational Garrote to a Multiple Measurement Vectors Model
(08/12/2018) Expansion of the Variational Garrote to a Multiple Measurement Vectors Model The recovery of sparse signals in underdetermined systems is the focus of this paper. We propose an expanded version of the Variational Garrote, originally presented by Kappen (2011), which can use multiple measurement vectors (MMVs) to further improve source retrieval performance. We show its superiority compared to the original formulation and demonstrate its ability to correctly estimate both the sources’ location and their magnitude. Finally evidence is given of the high performance of the proposed algorithm compared to other MMV models.
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