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Convolutional group-sparse coding and source localization

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 نشر من قبل Pol del Aguila Pla
 تاريخ النشر 2018
  مجال البحث هندسة إلكترونية
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In this paper, we present a new interpretation of non-negatively constrained convolutional coding problems as blind deconvolution problems with spatially variant point spread function. In this light, we propose an optimization framework that generalizes our previous work on non-negative group sparsity for convolutional models. We then link these concepts to source localization problems that arise in scientific imaging and provide a visual example on an image derived from data captured by the Hubble telescope.

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