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Performance of orthogonal matching pursuit for multiple measurement vectors with noise

机译:具有噪声的多个测量向量的正交匹配追踪性能

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Orthogonal matching pursuit (OMP) algorithm for the multiple measurement vectors (MMV) is a greedy method to find the sparse matrix with few nonzero rows that represents the measurement vectors under the sensing matrix. This paper analyzes the recovery performance of OMP for MMV (OMPMMV) in the bounded noise scenarios, and provides the sufficient conditions that are related to the sensing matrix and sparse matrix for exact support recovery. We start with the intuitive sufficient conditions for exact support recovery, and then apply these conditions to scenarios of two types of bounded noise. The results show that under some conditions on the coherence of the sensing matrix and the minimum ί;
机译:多个测量向量(MMV)的正交匹配追踪(OMP)算法是一种贪婪的方法,用于查找具有很少非零行的稀疏矩阵,该稀疏矩阵表示传感矩阵下的测量向量。本文分析了在有限噪声情况下OMP for MMV(OMPMMV)的恢复性能,并提供了与感测矩阵和稀疏矩阵相关的充分条件,以实现精确的支持恢复。我们从直观的充分条件开始,以进行精确的支撑恢复,然后将这些条件应用于两种类型的边界噪声场景。结果表明,在某些条件下,感测矩阵的相干性和最小?

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