Abstract :
Suppose x is an unknown vector in Ropfm (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(m1/4log5/2(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 lscrp ball for 0<ples1. The N most important coefficients in that expansion allow reconstruction with lscr2 error O(N1/2-1p/). It is possible to design n=O(Nlog(m)) nonadaptive measurements allowing reconstruction with accuracy comparable to that attainable with direct knowledge of the N most important coefficients. Moreover, a good approximation to those N important coefficients is extracted from the n measurements by solving a linear program-Basis Pursuit in signal processing. The nonadaptive measurements have the character of "random" linear combinations of basis/frame elements. Our results use the notions of optimal recovery, of n-widths, and information-based complexity. We estimate the Gel\´fand n-widths of lscrp balls in high-dimensional Euclidean space in the case 0<ples1, and give a criterion identifying near- optimal subspaces for Gel\´fand n-widths. We show that "most" subspaces are near-optimal, and show that convex optimization (Basis Pursuit) is a near-optimal way to extract information derived from these near-optimal subspaces
Keywords :
convex programming; data compression; image coding; image reconstruction; image sampling; image sensors; sparse matrices; transform coding; Euclidean space; convex optimization; general linear functional measurement; image reconstruction; nonadaptive nonpixel sampling; sensing compression; signal processing; sparse representation; transform coding; Compressed sensing; Data mining; Digital images; Image coding; Image reconstruction; Pixel; Signal processing; Size measurement; Transform coding; Vectors; Adaptive sampling; Basis Pursuit; Gel´fand; Quotient-of-a-Subspace theorem; almost-spherical sections of Banach spaces; eigenvalues of random matrices; information-based complexity; integrated sensing and processing; minimum; optimal recovery; sparse solution of linear equations;