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A typical reconstruction limit of compressed sensing based on Lp-norm minimization

6 July 2009
Y. Kabashima
Tadashi Wadayama
Toshiyuki Tanaka
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Abstract

We consider the problem of reconstructing an NNN-dimensional continuous vector \bx\bx\bx from PPP constraints which are generated by its linear transformation under the assumption that the number of non-zero elements of \bx\bx\bx is typically limited to ρN\rho NρN (0≤ρ≤10\le \rho \le 10≤ρ≤1). Problems of this type can be solved by minimizing a cost function with respect to the LpL_pLp​-norm ∣∣\bx∣∣p=lim⁡ϵ→+0∑i=1N∣xi∣p+ϵ||\bx||_p=\lim_{\epsilon \to +0}\sum_{i=1}^N |x_i|^{p+\epsilon}∣∣\bx∣∣p​=limϵ→+0​∑i=1N​∣xi​∣p+ϵ, subject to the constraints under an appropriate condition. For several ppp, we assess a typical case limit αc(ρ)\alpha_c(\rho)αc​(ρ), which represents a critical relation between α=P/N\alpha=P/Nα=P/N and ρ\rhoρ for successfully reconstructing the original vector by minimization for typical situations in the limit N,P→∞N,P \to \inftyN,P→∞ with keeping α\alphaα finite, utilizing the replica method. For p=1p=1p=1, αc(ρ)\alpha_c(\rho)αc​(ρ) is considerably smaller than its worst case counterpart, which has been rigorously derived by existing literature of information theory.

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