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Modified-CS: Modifying compressive sensing for problems with partially known support

机译:修改-CS:修改压缩感应对部分已知支持的问题

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We study the problem of reconstructing a sparse signal from a limited number of its linear projections when a part of its support is known. This may be available from prior knowledge. Alternatively, in a problem of recursively reconstructing time sequences of sparse spatial signals, one may use the support estimate from the previous time instant as the ldquoknownrdquo part of the support. The idea of our solution (modified-CS) is to solve a convex relaxation of the following problem: find the signal that satisfies the data constraint and whose support contains the smallest number of new additions to the known support. We obtain sufficient conditions for exact reconstruction using modified-CS. These turn out to be much weaker than those needed for CS, particularly when the known part of the support is large compared to the unknown part.
机译:当已知其支持部分时,我们研究了从有限数量的线性投影重建稀疏信号的问题。这可以从先验知识中获得。或者,在递归重建稀疏空间信号的时间序列的问题中,可以从前一次瞬间使用支持估计作为支持的LDQUOKNOWNRDQUO部分。我们解决方案(修改为CS)的想法是解决以下问题的凸松弛:找到满足数据约束的信号,其支持包含已知支持的最小次数。我们使用修改为CS获得充分的重建条件。这些结果比CS所需的结果要弱得多,特别是当与未知部分相比,当支持部分的已知部分大时。

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