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A new method to compute optimal periodic sampling patterns

机译:一种计算最佳周期性采样模式的新方法

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摘要

It is possible to reconstruct a signal from cyclic nonuniform samples and thus take advantage of a lower sampling rate than the Nyquist rate. However, this has the potential drawback of amplifying signal perturbations, e.g. due to noise and quantization. We propose an algorithm based on sparse reconstruction techniques, which is able to find the sparsest sampling pattern that permits perfect reconstruction of the sampled signal. The result of our algorithm with a proper constraint values is a sparse subset of samples that results in an ideal condition number for its equivalent sub-DFT matrix. Besides, our algorithm has low complexity in terms of computation. The method is illustrated by simulations for a sparse multi band signal.
机译:可以从循环非均匀采样中重建信号,从而可以利用比奈奎斯特速率低的采样速率。然而,这具有放大信号扰动的潜在缺点,例如放大了信号扰动。由于噪声和量化。我们提出了一种基于稀疏重构技术的算法,该算法能够找到最稀疏的采样模式,从而可以完美地重构采样信号。具有适当约束值的算法的结果是样本的稀疏子集,这为其等效的子DFT矩阵产生了理想的条件编号。此外,我们的算法在计算方面具有较低的复杂度。通过对稀疏多频带信号的仿真来说明该方法。

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