Near Minimax Line Spectral Estimation

IEEE Transactions on Information Theory(2015)

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摘要
This paper establishes a nearly optimal algorithm for denoising a mixture of sinusoids from noisy equispaced samples. We derive our algorithm by viewing line spectral estimation as a sparse recovery problem with a continuous, infinite dictionary. We show how to compute the estimator via semidefinite programming and provide guarantees on its mean-squared error rate. We derive a complementary minimax lower bound on this estimation rate, demonstrating that our approach nearly achieves the best possible estimation error. Furthermore, we establish bounds on how well our estimator localizes the frequencies in the signal, showing that the localization error tends to zero as the number of samples grows. We verify our theoretical results in an array of numerical experiments, demonstrating that the semidefinite programming approach outperforms three classical spectral estimation techniques.
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关键词
approximate support recovery,localization error,signal denoising,infinite dictionary,compressive sensing,superresolution,mathematical programming,spectral analysis,complementary minimax lower bound,minimax techniques,line spectral estimation,semidefinite programming,mean square error rate,minimax rate,sparsity,atomic norm,stable recovery,sparse recovery problem,near minimax line spectral estimation,sinusoid mixture denoising,mean square error methods,signal processing,convex optimization,polynomials,noise,atomic clocks,noise measurement,estimation
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