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NON-NEGATIVE SUPER-RESOLUTION IS STABLE

机译:非负超分辨率稳定

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We consider the problem of localizing point sources on an interval from possibly noisy measurements. In the absence of noise, we show that measurements from Chebyshev systems are an injective map for non-negative sparse measures, and therefore non-negativity is sufficient to ensure uniqueness for sparse measures. Moreover, we characterize non-negative solutions from inexact measurements and show that any non-negative solution consistent with the measurements is proportionally close to the solution of the system with exact measurements. Our results substantially simplify, extend, and generalize the prior work by De Castro et al. [1] and Schiebinger et al. [2], which relies upon sparsifying penalties, by showing that it is the non-negativity constraint, rather than any particular algorithm, that imposes uniqueness of the sparse non-negative measure, and by extending the results to inexact samples.
机译:我们考虑将点源定位在可能有噪声的测量值上的时间间隔内的问题。在没有噪声的情况下,我们证明了来自Chebyshev系统的测量是非负稀疏测度的内射图,因此非负性足以确保稀疏测度的唯一性。此外,我们从不精确的测量中表征了非负解,并表明与测量相符的任何非负解都按比例接近精确测量系统的解。我们的结果大大简化,扩展和概括了De Castro等人的现有工作。 [1]和Schiebinger等。 [2]依靠稀疏的惩罚,通过证明稀疏非负度量的唯一性,是非负约束,而不是任何特定算法,并将结果扩展到不精确样本。

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