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The CS theory tells us that when certain conditions hold, namely that the functions cannot sparsely represent the elements of the basis (a condition known as incoherence of the two dictionaries [link] , [link] , [link] , [link] ) and the number of measurements is large enough, then it is indeed possible to recover the set of large (and thus the signal ) from a similarly sized set of measurements . This incoherence property holds for many pairs of bases, including forexample, delta spikes and the sine waves of a Fourier basis, or the Fourier basis and wavelets. Significantly, this incoherencealso holds with high probability between an arbitrary fixed basis and a randomly generated one.
Although the problem of recovering from is ill-posed in general (because , , and ), it is indeed possible to recover sparse signals from CS measurements. Given the measurements , there exist an infinite number of candidate signals in the shifted nullspace that could generate the same measurements (see Linear Models from Low-Dimensional Signal Models ). Recovery of the correct signal can be accomplished by seeking a sparse solution among these candidates.
Supposing that is exactly -sparse in the dictionary , then recovery of from can be formulated as the minimization
In principle, remarkably few incoherent measurements are required to recover a -sparse signal via minimization. Clearly, more than measurements must be taken to avoid ambiguity; the following theorem (which is proved in [link] ) establishes that random measurements will suffice. (Similar results were established by Venkataramani and Bresler [link] .)
TheoremLet be an orthonormal basis for , and let . Then the following statements hold:
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