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Reconstruction of aperiodic FRI signals and estimation of the rate of innovation based on the state space method

机译:基于状态空间方法的非周期性FRI信号的重构和创新速率的估计

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In the absence of observation noise, it is known that it is possible to develop exact sampling schemes for a large class of parametric non-bandlimited signals, namely, certain signals of finite rate of innovation (FRI signals), either periodic or aperiodic, such as streams of Diracs, nonuniform splines or piecewise polynomials. A common feature of such signals is that they have a finite number of degrees of freedom per unit of time and they can be reconstructed from a finite number of uniform samples of the filtered signal. Unfortunately, the accuracy of such reconstruction substantially degrades when the samples are distorted by noise. For the case of periodic FRI signals, good algorithms based on the state space method have been proposed which are robust against noise. However, in the case of aperiodic signals, these algorithms may still fail to accurately reconstruct the signals due to ill-conditioning problems that often arise in the matrices involved. This paper proposes a new reconstruction method for aperiodic FRI signals that is also based on the state space method but has a considerably better numerical conditioning than previous reconstruction algorithms. This advantage is achieved by using a frequency domain formulation.
机译:在没有观测噪声的情况下,众所周知,有可能针对一大类参数化非带限信号,即周期或非周期性的有限创新速率的某些信号(FRI信号),开发精确的采样方案,例如作为狄拉克,非均匀样条或分段多项式的流。这样的信号的共同特征是它们每单位时间具有有限数量的自由度,并且它们可以从有限数量的滤波信号的均匀样本中重建。不幸的是,当样本由于噪声而失真时,这种重构的精度会大大降低。对于周期性FRI信号,已经提出了一种基于状态空间方法的良好算法,该算法对噪声具有鲁棒性。但是,在非周期性信号的情况下,由于经常在所涉及的矩阵中出现不适状况问题,这些算法仍可能无法准确地重建信号。本文提出了一种新的非周期FRI信号重建方法,该方法也基于状态空间方法,但是比以前的重建算法具有更好的数值条件。通过使用频域公式可以实现此优势。

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