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Multi-coset sampling and reconstruction of signals: Exploiting sparsity in spectrum monitoring

机译:多陪集采样和信号重构:在频谱监测中利用稀疏性

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We present an analytical representation of multi-coset sampling (MCS) and implement the proposed scheme on spectrum data to analyze the effect of MCS that requires less samples. Sampling pattern (SP) selection, which is one of the most significant phases of MCS, is investigated and the effect of the SP on reconstruction matrices and reconstruction process of the signal is analyzed. Different algorithms, which aim to find the optimum SP, are presented and their performances are compared. In order to present the feasibility of the process, MCS is implemented to measurements captured by a spectrum analyzer. The wideband spectrum measurements are obtained over 700–3000 MHz. They are sub-sampled and reconstructed again, so that the RMSE values of the reconstructed signals are evaluated. Effects of the SP search algorithms on the reconstruction process are analyzed for the spectrum monitoring application.
机译:我们提出了多陪伴抽样(MCS)的分析表示,并对频谱数据实施了拟议的方案,以分析需要较少样本的MCS的效果。研究了采样模式(SP)的选择,它是MCS最重要的阶段之一,并且分析了SP对重构矩阵和信号重构过程的影响。提出了旨在找到最佳SP的不同算法,并对它们的性能进行了比较。为了展示该方法的可行性,将MCS应用于频谱分析仪捕获的测量。宽带频谱测量是在700–3000 MHz范围内获得的。对它们进行二次采样并再次重建,以便评估重建信号的RMSE值。针对频谱监测应用,分析了SP搜索算法对重建过程的影响。

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