<< Chapter < Page | Chapter >> Page > |
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 satisfies the RIP of order with . Then satisfies the NSP of order with constant
The proof of this theorem involves two useful lemmas. The first of these follows directly from standard norm inequality by relating a -sparse vector to a vector in . We include a simple proof for the sake of completeness.
Suppose . Then
For any , . By applying the Cauchy-Schwarz inequality we obtain . The lower bound follows since has exactly nonzero entries all equal to (since ) and thus . The upper bound is obtained by observing that each of the nonzero entries of can be upper bounded by .
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 , not just vectors . It should be clear that when we do have , 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 " minimization proof" .
Suppose that satisfies the RIP of order , and let , be arbitrary. Let be any subset of such that . Define as the index set corresponding to the entries of with largest magnitude, and set . Then
where
Again, note that [link] holds for arbitrary . In order to prove [link] , we merely need to apply [link] to the case where .
Towards this end, suppose that . It is sufficient to show that
holds for the case where is the index set corresponding to the largest entries of . Thus, we can take to be the index set corresponding to the largest entries of and apply [link] .
The second term in [link] vanishes since , and thus we have
Using [link] ,
resulting in
Since , we have that
The assumption ensures that , and thus we may divide by without changing the direction of the inequality to establish [link] with constant
as desired.
Notification Switch
Would you like to follow the 'An introduction to compressive sensing' conversation and receive update notifications?