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Event-triggered sampling and reconstruction of sparse real-valued trigonometric polynomials

机译:稀疏实值三角多项式的事件触发抽样与重建

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We propose data acquisition from continuous-time signals belonging to the class of real-valued trigonometric polynomials using an event-triggered sampling paradigm. The sampling schemes proposed are: level crossing (LC), close to extrema LC, and extrema sampling. Analysis of robustness of these schemes to jitter, and bandpass additive gaussian noise is presented. In general these sampling schemes will result in non-uniformly spaced sample instants. We address the issue of signal reconstruction from the acquired data-set by imposing structure of sparsity on the signal model to circumvent the problem of gap and density constraints. The recovery performance is contrasted amongst the various schemes and with random sampling scheme. In the proposed approach, both sampling and reconstruction are non-linear operations, and in contrast to random sampling methodologies proposed in compressive sensing these techniques may be implemented in practice with low-power circuitry.
机译:我们使用事件触发的采样范例提出了属于实值三角多项式类别的连续时间信号的数据获取。提出的采样方案是:级联(LC),靠近极值LC和极值采样。提出了这些方案对抖动的鲁棒性的分析,并提出了带通添加剂高斯噪声。通常,这些采样方案将导致非均匀间隔的样品速度。我们通过在信号模型上施加稀疏结构来解决空隙和密度约束的问题来解决从获取的数据集的信号重建问题。恢复性能在各种方案和随机采样方案之间形成对比。在所提出的方法中,取样和重建都是非线性操作,与压缩感测中提出的随机采样方法形成对比,这些技术可以用低功耗电路实施。

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