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arxiv: 1604.03450 · v1 · pith:TRGSIL6Anew · submitted 2016-04-01 · ⚛️ physics.data-an · cs.IT· math.IT

A Noise-Robust Method with Smoothed ell₁/ell₂ Regularization for Sparse Moving-Source Mapping

classification ⚛️ physics.data-an cs.ITmath.IT
keywords deconvolutionmethodblinddomainmappingregularizationvarianceaccurate
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The method described here performs blind deconvolution of the beamforming output in the frequency domain. To provide accurate blind deconvolution, sparsity priors are introduced with a smooth \ell_1/\ell_2 regularization term. As the mean of the noise in the power spectrum domain is dependent on its variance in the time domain, the proposed method includes a variance estimation step, which allows more robust blind deconvolution. Validation of the method on both simulated and real data, and of its performance, are compared with two well-known methods from the literature: the deconvolution approach for the mapping of acoustic sources, and sound density modeling.

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