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Robust uncertainty principles: exact signal reconstruction from highly incomplete frequency information

机译:强大的不确定性原则:从高度不完整的频率信息中进行精确的信号重构

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This paper considers the model problem of reconstructing an object from incomplete frequency samples. Consider a discrete-time signal f/spl isin/C/sup N/ and a randomly chosen set of frequencies /spl Omega/. Is it possible to reconstruct f from the partial knowledge of its Fourier coefficients on the set /spl Omega/? A typical result of this paper is as follows. Suppose that f is a superposition of |T| spikes f(t)=/spl sigma//sub /spl tau//spl isin/T/f(/spl tau/)/spl delta/(t-/spl tau/) obeying |T|/spl les/C/sub M//spl middot/(log N)/sup -1/ /spl middot/ |/spl Omega/| for some constant C/sub M/>0. We do not know the locations of the spikes nor their amplitudes. Then with probability at least 1-O(N/sup -M/), f can be reconstructed exactly as the solution to the /spl lscr//sub 1/ minimization problem. In short, exact recovery may be obtained by solving a convex optimization problem. We give numerical values for C/sub M/ which depend on the desired probability of success. Our result may be interpreted as a novel kind of nonlinear sampling theorem. In effect, it says that any signal made out of |T| spikes may be recovered by convex programming from almost every set of frequencies of size O(|T|/spl middot/logN). Moreover, this is nearly optimal in the sense that any method succeeding with probability 1-O(N/sup -M/) would in general require a number of frequency samples at least proportional to |T|/spl middot/logN. The methodology extends to a variety of other situations and higher dimensions. For example, we show how one can reconstruct a piecewise constant (one- or two-dimensional) object from incomplete frequency samples - provided that the number of jumps (discontinuities) obeys the condition above - by minimizing other convex functionals such as the total variation of f.
机译:本文考虑了从不完整的频率样本中重建对象的模型问题。考虑离散时间信号f / spl isin / C / sup N /和随机选择的一组频率/ spl Omega /。是否可以从/ spl Omega /集上的傅立叶系数的部分知识中重建f?本文的典型结果如下。假设f是| T |的叠加峰值f(t)= / spl sigma // sub / spl tau // spl isin / T / f(/ spl tau /)/ spl delta /(t- / spl tau /)服从| T | / spl les / C / sub M // spl middot /(log N)/ sup -1 / / spl middot / | / spl Omega / |对于一些常数C / sub M /> 0。我们不知道尖峰的位置或幅度。然后,以至少1-O(N / sup -M /)的概率,可以完全重建f作为/ spl lscr // sub 1 /最小化问题的解决方案。简而言之,可以通过解决凸优化问题来获得精确的恢复。我们根据期望的成功概率给出C / sub M /的数值。我们的结果可以解释为一种新型的非线性采样定理。实际上,它表示任何由| T |构成的信号可以通过凸编程从几乎每个大小为O(| T | / spl middot / logN)的频率集中恢复尖峰。此外,从任何意义上讲,以概率1-O(N / sup -M /)成功的方法通常都需要至少与| T | / spl middot / logN成比例的多个频率样本,这几乎是最佳的。该方法扩展到各种其他情况和更高维度。例如,我们展示了如何通过最小化其他凸函数(例如总变化),从不完整的频率样本中重建分段常数(一维或二维)对象-前提是跳跃(不连续)的数量符合上述条件。的

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