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This module describes the relationship between the restricted isometry property (RIP) and the null space property (NSP). Specifically, it is shown that a matrix which satisfies the RIP will also satisfy the NSP.

Next we will show that if a matrix satisfies the restricted isometry property (RIP), then it also satisfies the null space property (NSP). Thus, the RIP is strictly stronger than the NSP.

Suppose that Φ satisfies the RIP of order 2 K with δ 2 K < 2 - 1 . Then Φ satisfies the NSP of order 2 K with constant

C = 2 δ 2 K 1 - ( 1 + 2 ) δ 2 K .

The proof of this theorem involves two useful lemmas. The first of these follows directly from standard norm inequality by relating a K -sparse vector to a vector in R K . We include a simple proof for the sake of completeness.

Suppose u Σ K . Then

u 1 K u 2 K u .

For any u , u 1 = u , sgn ( u ) . By applying the Cauchy-Schwarz inequality we obtain u 1 u 2 sgn ( u ) 2 . The lower bound follows since sgn ( u ) has exactly K nonzero entries all equal to ± 1 (since u Σ K ) and thus sgn ( u ) = K . The upper bound is obtained by observing that each of the K nonzero entries of u can be upper bounded by u .

Below we state the second key lemma that we will need in order to prove [link] . This result is a general result which holds for arbitrary h , not just vectors h N ( Φ ) . It should be clear that when we do have h N ( Φ ) , the argument could be simplified considerably. However, this lemma will prove immensely useful when we turn to the problem of sparse recovery from noisy measurements later in this course , and thus we establish it now in its full generality. We state the lemma here, which is proven in " 1 minimization proof" .

Suppose that Φ satisfies the RIP of order 2 K , and let h R N , h 0 be arbitrary. Let Λ 0 be any subset of { 1 , 2 , ... , N } such that | Λ 0 | K . Define Λ 1 as the index set corresponding to the K entries of h Λ 0 c with largest magnitude, and set Λ = Λ 0 Λ 1 . Then

h Λ 2 α h Λ 0 c 1 K + β Φ h Λ , Φ h h Λ 2 ,

where

α = 2 δ 2 K 1 - δ 2 K , β = 1 1 - δ 2 K .

Again, note that [link] holds for arbitrary h . In order to prove [link] , we merely need to apply [link] to the case where h N ( Φ ) .

Towards this end, suppose that h N ( Φ ) . It is sufficient to show that

h Λ 2 C h Λ c 1 K

holds for the case where Λ is the index set corresponding to the 2 K largest entries of h . Thus, we can take Λ 0 to be the index set corresponding to the K largest entries of h and apply [link] .

The second term in [link] vanishes since Φ h = 0 , and thus we have

h Λ 2 α h Λ 0 c 1 K .

Using [link] ,

h Λ 0 c 1 = h Λ 1 1 + h Λ c 1 K h Λ 1 2 + h Λ c 1

resulting in

h Λ 2 α h Λ 1 2 + h Λ c 1 K .

Since h Λ 1 2 h Λ 2 , we have that

( 1 - α ) h Λ 2 α h Λ c 1 K .

The assumption δ 2 K < 2 - 1 ensures that α < 1 , and thus we may divide by 1 - α without changing the direction of the inequality to establish [link] with constant

C = α 1 - α = 2 δ 2 K 1 - ( 1 + 2 ) δ 2 K ,

as desired.

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Source:  OpenStax, An introduction to compressive sensing. OpenStax CNX. Apr 02, 2011 Download for free at http://legacy.cnx.org/content/col11133/1.5
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