Title :
On the Theorem of Uniform Recovery of Random Sampling Matrices
Author :
Andersson, Jon ; Stromberg, Jan-Olov
Author_Institution :
Dept. of Math., R. Inst. of Technol., Stockholm, Sweden
Abstract :
We consider two theorems from the theory of compressive sensing. Mainly a theorem concerning uniform recovery of random sampling matrices, where the number of samples needed in order to recover an s-sparse signal from linear measurements (with high probability) is known to be m ≳ s(ln s)<;sup>3<;/sup>lnN. We present new and improved constants together with what we consider to be a more explicit proof. A proof that also allows for a slightly larger class of m × N-matrices, by considering what is called effective sparsity. We also present a condition on the so-called restricted isometry constants, δ<;sub>s<;/sub>, ensuring sparse recovery via ℓ<;sup>1<;/sup>-minimization. We show that is sufficient and that this can be improved further to almost allow for a sufficient condition of the type .
Keywords :
compressed sensing; matrix algebra; compressive sensing; effective sparsity; explicit proof; linear measurements; random sampling matrices; restricted isometry constants; s-sparse signal; sparse recovery; uniform recovery; Compressed sensing; Linear matrix inequalities; Materials; Null space; Random variables; Sparse matrices; Vectors; $ell^{1}$-minimization; Bounded orthogonal systems; compressive sensing; effective sparsity; random sampling matrices; restricted isometry property;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2014.2300092