articleIEEE Transactions on Information TheoryApr 1, 2006Closed access

Compressed sensing

Stanford University

Indexed incrossref

Abstract

Suppose x is an unknown vector in Ropf m (a digital image or signal); we plan to measure n general linear functionals of x and then reconstruct. If x is known to be compressible by transform coding with a known transform, and we reconstruct via the nonlinear procedure defined here, the number of measurements n can be dramatically smaller than the size m. Thus, certain natural classes of images with m pixels need only n=O(m 1/4 log 5/2 (m)) nonadaptive nonpixel samples for faithful recovery, as opposed to the usual m pixel samples. More specifically, suppose x has a sparse representation in some orthonormal basis (e.g., wavelet, Fourier) or tight frame (e.g., curvelet, Gabor)-so the coefficients belong to an…

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Topics & keywords

Keywords
  • Compressed sensing
  • Orthonormal basis
  • Artificial intelligence
  • Pixel
  • Computer science
  • Combinatorics
  • Algorithm
  • Mathematics
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