Appl. Comput. Harmon. Anal. 17 (2004) 29–47
www.elsevier.com/locate/acha
Localization of frames II
Elena Cordero a and Karlheinz Gröchenig b,∗
a Department of Mathematics, University of Torino, Italy
b Institute of Biomathematics and Biometry, GSF—National Research Center for Environment and Health,
Ingolstädter Landstrasse 1, D-85764 Neuherberg, Germany
Received 26 October 2003; revised 12 February 2004; accepted 12 February 2004
Available online 25 May 2004
Communicated by Joachim Stöckler, Guest Editor
Abstract
The theory of localized frames is refined to include quasi-Banach spaces and spaces with multiple generators.
Applications are given to nonlinear approximation with frames and to the convergence of the iterative frame
algorithm in finer norms, and to the characterization of Besov spaces with wavelet frames.
2004 Elsevier Inc. All rights reserved.
Keywords: Frame; Banach frame; Frame algorithm; Quasi-Banach space; Jaffard’s lemma; Nonlinear approximation;
Shift-invariant spaces with multiple generators; Wavelet frames; Besov spaces
MSC: 42C15; 46E99; 46B15; 47B37; 41A63; 94A12
1. Introduction
The rise of frame theory in applied mathematics is due to the flexibility and redundancy of frames.
Structured frames are much easier to construct than structured orthonormal bases. Redundancy is
useful in the case of lossy data, often provides more numerical stability, and plays a pivot role in the
spectacular applications of Σ∆-quantization [12]. The concept of frames was introduced by Duffin and
Schaeffer [15] and popularized greatly by the work of Daubechies and her coauthors [7–10]. For up-todate treatments of frames one may consult the monographs [4,5,30] or the special issue [2]. Although
the frame concept is a pure Hilbert space concept, it was recognized early on that the usefulness of
frames goes far beyond Hilbert space theory. For instance, wavelet frames are used to detect smoothness
* Corresponding author.
E-mail addresses:
[email protected] (E. Cordero),
[email protected] (K. Gröchenig).
1063-5203/$ – see front matter 2004 Elsevier Inc. All rights reserved.
doi:10.1016/j.acha.2004.02.002
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
and compression properties of functions, Gabor frames characterize the time-frequency concentration of
distributions, and frames of reproducing kernels yield sampling theorems in function spaces. In all these
applications, the frames satisfy some additional hypotheses: the wavelet of a wavelet frame must satisfy
smoothness and moment conditions, whereas the Haar wavelet is not appropriate; a Gaussian window
works very well for Gabor frames, whereas a rectangular Gabor window does not capture frequency
concentration. While in these concrete examples it is well understood what constitutes a “good frame,” it
is not obvious how to formulate appropriate conditions for arbitrary frames.
The preceding paper [28] is an attempt to understand “good frames.” In our opinion, the relevant
property to distinguish “good frames” among arbitrary frames is a new form of localization for frames.
The main result of [28] asserts that the localization properties of a frame are inherited by its dual frame.
For “good frames” in this sense, we show that a class of associated Banach spaces can be characterized
completely by the magnitude of the frame coefficients and that the frame expansion is stable in these
Banach spaces. The examples considered in [28] are the sampling theory in shift-invariant spaces and
Gabor frames. Frames of reproducing kernels in shift-invariant spaces can be shown to be “local” and
lead to local reconstruction formulas. Likewise, Gabor frames with suitable time-frequency localization
possess a dual frame with the same time-frequency localization, and as a consequence the time-frequency
concentration of distributions can be characterized using Gabor frames. These examples settled two
conjectures about sampling and about Gabor frames in the literature. Another application of localized
frames was given in [27] where a conjecture of Feichtinger was partially solved. The circulation of the
preprint [28] has stimulated a number of further investigations: in [6] precise error estimates are derived
for the finite section method, these work exactly for localized frames, in [16] an equivalence relation of
localized frames and applications to α-modulation spaces are studied.
Independently and in a completely different direction, Balan, Casazza, Heil, and Landau [3] have
introduced a similar concept of localization to define the density of an abstract frame. Based on their
theory of localization, they prove deep inequalities relating this density to the excess of frames.
In this paper we study several new facets of localized frames and answer several questions that came
up in discussions of localized frames. While our methods are mostly standard, we use Banach algebra
techniques for some decisive arguments. Our results owe their depth to a highly nontrivial theorem of
Jaffard and Journé [31].
Specifically, we will extend the characterization of functional properties by means of frames to
certain quasi-Banach spaces. Quasi-Banach spaces have made a comeback through the rise of nonlinear
approximation theory. We will show that localized frames yield sparse representations for the associated
classes of quasi-Banach spaces.
Next we will investigate the convergence of the iterative frame algorithm of Duffin and Schaeffer (and
some of its accelerations) in the norm of the associated Banach spaces. Sometimes, in particular for
frames without structure, the iterative frame algorithm is still preferred to more sophisticated methods,
because it does not require any knowledge of the dual frame. We show that the iterative frame algorithm
converges automatically in much finer norms. Our result shows that localized frames possess a surprising
robustness in their numerical performance. To say it more flamboyantly, localized frames are “good
frames” for numerical analysis.
As an example we will treat the sampling problem in shift-invariant spaces with multiple generators.
This requires the study of frames that are localized with respect to Riesz basis with additional structure.
In the final example we will characterize certain Besov spaces by localized wavelet frames. This
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
31
characterization is remarkable in that we do not need any a priori assumptions on the dual frame. (A more
extensive treatment of wavelet frames will be carried out elsewhere.)
The results presented here could be summarized by saying that localized frames are indeed “good
frames.” We hope that this concept will have many more applications and motivate further results.
The paper is organized as follows: In Section 2 we introduce the concept of localized frames
and discuss the associated (quasi)-Banach spaces. In Section 3 we derive frame expansions and
characterizations for the quasi-Banach spaces with parameter p < 1. Section 4 is devoted to nonlinear
approximation with frames and shows that the associated Banach spaces possess sparse representations
with respect to localized frames. In Section 5 we investigate the convergence of the iterative frame
algorithm. In Section 6 we adjust the concept of localization to deal with shift-invariant spaces with
multiple generators. Finally, in Section 7 we apply localized wavelet frames for a characterization of
certain Besov spaces.
2. Localization of frames and associated Banach spaces
We first review the new concept of localization for frames and summarize the main results from [28].
Throughout the paper E = {ex : x ∈
X } denotes a frame for a given Hilbert space H; this means
that the frame operator Sf = SE f = x∈X f, ex ex is bounded and boundedly invertible on H. The
set {gn : n ∈ N } is always a Riesz basis for H with dual basis {gn : n ∈ N }. The set N is assumed to
be separated in Rd , i.e., infx,y∈N : x=y |x − y| δ > 0, and X is relatively separated in Rd , i.e., X is a
finite union of separated sets. We should think of the index as a kind of localization. For instance, if
H = L2 (Rd ), then the index x in ex (t) indicates that the essential support of ex is centered at x.
2.1. Localized frames
Definition 1. A frame E = {ex : x ∈ X } for a Hilbert space H is called polynomially localized with respect
to the Riesz basis {gn } with decay s > 0 (or simply s-localized) if
ex , gn C 1 + |x − n| −s
(1)
and
ex , gn C 1 + |x − n| −s
(2)
for all n ∈ N and x ∈ X . Similarly, a frame E = {ex : x ∈ X } for H is called exponentially localized with
respect to the Riesz basis {gn } if for some α > 0
max ex , gn , ex , gn Ce−α|x−n| ∀x ∈ X , n ∈ N .
(3)
The main theorem in the theory of localized frames asserts that the dual frame E = {
ex := S −1 ex : x ∈
X } possesses the same localization properties. In the following d is the dimension of the “carrier” space
Rd for N and X .
Theorem 2.1. (a) If E is s-localized with respect to the Riesz basis {gn } for some s > d, then E is also
s-localized.
(b) If E is exponentially localized, then E is also exponentially localized (with a possibly different
exponent in (3)).
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
To give the reader an idea what is involved in this statement, we sketch a short proof for polynomially
localized frames. The precise details can be found in [28].
Proof. The proof is based on two important facts from the theory of Banach algebras. Let As be the class
of N × N -matrices A = (akl ) such that
−s
|akl | C 1 + |k − l|
for all k, l ∈ N .
(4)
Jaffard [31] proved the following properties: (a) If s > d, then As is an algebra (under matrix
multiplication). (b) If A ∈ As for s > d and if A is invertible on ℓ2 (N ), then A−1 ∈ As . See [31], also
[29] for a new proof and refinements.
Step 1. Let (Γf )(n) = f, gn . Since
of H, Γ is an isomorphism from H
{gn : k ∈ N } is a Riesz basis
2
−1
2
onto ℓ (N ) with inverse Γ c = k∈N cn gn for c = (cn ) ∈ ℓ (N ). Then the frame operator S can be
factored as
S = Γ −1 T Γ,
(5)
where T is the matrix of S with respect to the given Riesz basis. It has the entries
Tkl = Sgl , gk =
gl , ex ex , gk , k, l ∈ N .
x∈X
It follows that T is invertible on ℓ2 (N ) if and only if S is invertible on H.
Step 2. Let bkl = maxx∈X ∩(k+[0,1]d ) |ex , gl | and ckl = maxx∈X ∩(k+[0,1]d ) |ex , gl | for k, l ∈ N . The slocalization of E implies that B, C∈ As . Since X is relatively separated, supk∈N card{x ∈ X : x ∈
k + [0, 1]d } = ν < ∞ and therefore x∈X ∩(k+[0,1]d ) |ex , gl | νbkl and similarly for C.
Step 3. We estimate the entries of T :
gl , ex ex , gk ν 2
|Tkl |
bml cmk = ν 2 (C ∗ B)kl .
m∈N x∈X ∩(m+[0,1]d )
m∈N
Since B, C and C ∗ are all in the algebra As , we find that T ∈ As as well, explicitly, |Tkl | C(1 +
|k − l|)−s , k, l ∈ N .
Step 4. Since T ∈ As and T is invertible on ℓ2 (N ) by Step 1, Jaffard’s lemma implies that T −1 ∈ As .
Let U be the matrix with entries ukl = |(T −1 )kl |, then also U ∈ As .
Step 5. To show that E is s-localized, we must check the size of S −1 ex , gl and S −1 ex , gn . Using (5)
in the form Γ S −1 = T −1 Γ , we obtain that
−1
S ex , gl =
(Γ S −1 ex )(l)
ckl =
max
max
x∈X ∩(k+[0,1]d )
x∈X ∩(k+[0,1]d )
−1
−1
(T Γ ex )(l) =
=
max
max
(T )lm ex , gm
x∈X ∩(k+[0,1]d )
x∈X ∩(k+[0,1]d )
m∈N
ulm
max
ex , gm =
ulm ckm = (CU ∗ )kl .
m∈N
x∈X ∩(k+[0,1]d )
m∈N
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
33
= (c̃kl ) ∈ As .
Since C, U ∈ As and As is an algebra, we find that C
Step 6. To obtain the estimate for S −1 ex , gl , we interchange the role of gn and g˜n . Precisely, define
Γf (n) = f, gn and Tkl = S
gl , gk , then S = Γ−1 TΓ. The same argument as above shows that
the matrix B̃ with entries b̃kl = maxx∈X ∩(k+[0,1]d ) |S −1 ex , gl | is also in As . This means that E is slocalized. ✷
For applications, including the solution of two conjectures in sampling theory and Gabor theory, the
reader should consult [28]; for a refinement of Theorem 2.1 to other decay conditions see [29].
2.2. Associated Banach spaces
p
Let m be a positive, even, and continuous function on Rd and ℓm (X ) the corresponding weighted
ℓp -space defined by the norm
1/p
,
(6)
c ℓpm =
|cx |p m(x)p
x∈X
with the usual modification for p = ∞.
p
p
Definition 2. Let 0 < p ∞. If ℓm (N ) ⊆ ℓ2 (N ), then the Banach space Hm is defined to be
p
= f ∈ H: f =
Hm
cn gn for c ∈ ℓpm (N )
(7)
n∈N
p
p
with norm f Hpm = c ℓpm . If ℓm ℓ2 (N ) and p < ∞, then
Hm is defined as the completion of the
subspace H0 of finite linear combinations, i.e., H0 = {f = n∈N cn gn : supp c finite}, with respect to the
∗
2
∞
norm f Hpm = c ℓpm . If p = ∞ and ℓ∞
m ℓ , then Hm is weak completion of H0 .
Remark 1. (1) Note that cn is uniquely determined, in fact, cn = f, gn or c = Γf .
p
p
(2) If ℓm (N ) ⊆ ℓ2 (N ), then Hm is a (dense) subspace of H.
To make the analysis of the associated spaces accessible to harmonic analysis methods, we will only
use two types of weights: A nonnegative, continuous, and even function m on Rd is called an s-moderate
weight if there are constants C, s 0 such that
s
m(t + x) C 1 + |t| m(x) for all t, x ∈ Rd .
(8)
A weight function m is called subexponential if there are constants C, γ > 0 and 0 β < 1 such that
β
m(t + x) Ceγ |t | m(x)
for all t, x ∈ Rd .
(9)
By setting x = 0 in (8) and in (9) we see that an s-moderate weight m grows at most polynomially, i.e.,
β
m(t) C(1 + |t|)s , and a subexponential weight grows at most like Ceγ |t | .
2.3. Frame analysis of the associated Banach spaces
A thorough analysis of the coefficient map and synthesis operator that are associated with every frame
p
leads to a complete understanding of the Banach spaces Hm by means of their frame coefficients [28].
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Theorem 2.2. Assume that E = {ex : x ∈ X } is an r-localized frame with respect to the Riesz basis {gn }
and that r > s + d.
p
(a) Then the frame operator S is invertible simultaneously on all Banach spaces Hm , where 1 p ∞
and m is an s-moderate weight.
(b) The frame expansion
f=
f, ex
ex =
f, ex ex
(10)
x∈X
x∈X
p
∞
).
converges unconditionally in Hm for 1 p < ∞ (and weak∗ unconditionally in Hm
(c) We have the norm equivalence
1/p
1/p
f, ex p m(x)p
f, ex p m(x)p
.
≍
f Hpm ≍
x∈X
(11)
x∈X
If E is exponentially localized, (a)–(c) hold simultaneously for the larger class of all subexponential
weights.
p
3. Frame analysis of the quasi-Banach spaces Hm , 0 < p < 1
p
In this section we extend Theorem 2.2 to the quasi-Banach space Hm , p < 1. The extension of
Theorem 2.2 to the case of quasi-Banach spaces is necessary for several concrete reasons: (a) In
approximation theory the parameter p describes the “sparsity” of a representation, and there is no reason
to limit the sparsity to p 1, when higher sparsity (corresponding to smaller p) is of practical interest.
(b) In the theory of Besov spaces as well as in other families of function spaces it is unnatural to restrict
to the Banach space case. The complete results should be formulated for the full range of parameters.
To extend Theorem 2.2 to p < 1, we need to analyze the boundedness of the coefficient and
reconstruction operators for the frame
E. Let Cf = CE f = (f, ex )x∈X be the coefficient operator
associated to E, and Rc = RE c = x∈X cx ex for c = (cx )x∈X be the reconstruction operator. Then
p
S = SE = RE CE . To prove a version of Theorem 2.2 for Hm , p < 1, we have to show that both C
and R are well-defined in the quasi-Banach space case. Although formally we have R = C ∗ , we have to
prove the boundedness of R and C separately, because duality arguments do no longer work for p < 1.
The first lemma is an extension of [28, Lemma 3] to the case 0 < p < 1. If N = X = Zd , the following
p
p
lemma coincides with Young’s theorem ℓm ∗ ℓpv ֒→ ℓm for 0 < p 1.
Lemma 3.1. Let A = (Axn ), x ∈ X , n ∈ N be an X × N -matrix with associated operator (Ac)(x) =
n∈N Axn cn , and let 0 < p 1 and ǫ > 0.
p
p
(a) If |Axn | C(1 + |x − n|)−s−(d+ǫ)/p , ∀n ∈ N , x ∈ X , then A is bounded from ℓm (N ) to ℓm(X ) for
all s-moderate weights m.
p
p
(b) If |Axn | Ce−α|x−n| , x ∈ X , n ∈ N , then A maps ℓm (N ) to ℓm (X ) for all subexponential
weights m.
Proof. (a) Since | x∈X cx |p x∈X |cx |p for 0 < p 1, we can argue as in [28, Lemma 2.1], namely,
p
p
Ac ℓp (X ) =
Axn cn m(x)p
m
x∈X n∈N
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
−sp−(d+ǫ) p
1 + |x − n|
|cn | m(x)p
C
x∈X n∈N
C sup
n∈N
×
=C
′
x∈X
−sp
−(d+ǫ)
m(n)−p m(x)p
sup 1 + |x − n|
1 + |x − n|
x∈X , n∈N
|cn |p m(n)p
n∈N
p
c ℓp (N ) .
m
(12)
Since X is relatively separated, the first supremum occurring in (12) is finite (see also [28, Lemma 2.1]),
the second supremum is finite because of m(x − n + n)p C(1 + |x − n|)ps m(n)p for all x, n ∈ Rd .
(b) is shown similarly and left to the reader. ✷
We now show that the frame operator of localized frames is well behaved on the quasi-Banach spaces
0 < p < 1. For polynomial localization the results hold only above a critical index p0 , whereas for
exponential localization there is no restriction on p.
p
Hm ,
Proposition 3.2. Assume that E is an r-localized frame for some r > s + d. Let p0 be the critical index
d
< 1. If p0 < p ∞ and m is an s-moderate weight, then
p0 = r−s
p
p
(a) the coefficient operator CE is bounded from Hm to ℓm (X ),
p
p
(b) the synthesis operator RE extends to a bounded mapping from ℓm (X ) to Hm , and
p
p
(c) the frame operator S = SE = DE CE maps Hm into Hm , and the series converges unconditionally for
p0 < p < ∞.
If E is an exponentially localized frame, then these statements hold for all subexponential weights and
all p, 0 < p ∞.
Proof. We prove these statements for polynomially localized frames and leave the simple modifications
for exponentially localized frames to the reader. The case p 1 is already contained in [28], so we may
assume p 1.
(a) Set Axn = gn , ex . If f = n∈N cn gn , then
(Cf )(x) = f, ex =
cn gn , ex = (Ac)(x).
(13)
n∈N
p
By hypothesis, |Axn | C(1 + |x − n|)−r , so Lemma 3.1(a) implies that A is bounded on ℓm (N ), provided
d
= p0 . Consequently,
that r > s + pd or p > r−s
CE f
p
ℓm (X )
= Ac
p
ℓm (N )
C′ c
p
ℓm (N )
= C′ f
(b) Set bnx = ex , gn . We need to show that for
(Rc)(n) =
cx ex , g˜n = (Bc)(n)
Hpm .
p
c ∈ ℓm (X )
the sequence with entries
x∈X
is in
p
ℓm (N ).
As above this follows from the hypothesis and Lemma 3.1(a) (with X and N interchanged).
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
(c) follows by combining (a) and (b). As for the unconditional convergence of the series defining S, let
ǫ > 0 and choose N0 = N0 (ǫ), such that f, ex x ∈/ N0 ℓpm ǫ. Then for any finite set N1 ⊇ N0 , assertions
(a) and (b) imply that
Sf −
f, ex ex
RE op f, ex x ∈/ N1 ℓp < RE op ǫ.
This means that
m
p
Hm
x∈N1
p
converges unconditionally in Hm .
x∈X f, ex ex
✷
We can now formulate the main result about the frame characterization for the quasi-Banach spaces
p < 1.
p
Hm ,
Theorem 3.3. Assume that E = {ex : x ∈ X } is an r-localized frame with respect to the Riesz basis {gn }
d
< 1.
and that r > s + d. Set p0 = r−s
p
(a) Then the frame operator S is invertible simultaneously on all quasi-Banach spaces Hm , where
p0 < p ∞ and m is an s-moderate weight.
(b) The frame expansion
f=
f, ex
ex =
f, ex ex
(14)
x∈X
x∈X
p
∞
converges unconditionally in Hm for p0 < p < ∞ (and weak∗ unconditionally in Hm
).
(c) We have the norm equivalence
f
Hpm
≍
f, ex p m(x)p
1/p
≍
x∈X
f, ex p m(x)p
1/p
(15)
.
x∈X
If E is an exponentially localized frame, then (a)–(c) hold simultaneously for all subexponential weights
and all p, 0 < p ∞.
p
Proof. Since S = Γ −1 T Γ by (5) and since by definition Γ is an isometric isomorphism between Hm
p
p
p
and ℓm (N ), S is invertible on Hm if and only if T is invertible on ℓm (N ). We have seen in the proof of
−1
−1
Theorem 2.1 that T ∈ Ar whenever E is r-localized, therefore T is bounded simultaneously on all
p
ℓm (N ) for p > p0 and s-moderate weights by Lemma 3.1. This proves (a).
p
(b) follows from Proposition 3.2, since the identity on Hm factors as I = RECE and both E and E are
r-localized and r > s + d/p.
(c) This factorization also implies the norm equivalence: Since f = RECE f , we have
f
Hpm
RE
op
CE f
p
ℓm (X )
RE
op
CE
op
f
Hpm .
The second norm equivalence is shown by using the factorization I = RE CE.
p
✷
Remark 2. Note that for the treatment of the Banach spaces Hm with s-moderate weights we need
d
< 1.
r-localized frames with r > s + d. Consequently, we have always p0 = r−s
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
4. Nonlinear approximation with localized frames
The main question in nonlinear approximation theory is how well elements in a Banach space can be
approximated by a given dictionary. Good approximation properties usually yield sparse representations
with respect to the given dictionary. See [13,36] for an extended discussion of the state of art of nonlinear
approximation.
In this brief section we investigate the approximation properties of a localized frame E. More precisely,
we consider so-called N -term approximation with respect to E.
Definition 3. For a frame E of H we let
ΣN = p =
cx ex : F ⊆ X , card F N
x∈F
denote the set of all linear combinations consisting of at most N terms. The N -term approximation error
in H is defined by
σN (f ) = inf
p∈ΣN
f −p
H.
The main tool for investigation of N -term approximation is the following lemma of Stechkin [34] and
DeVore and Temlyakov [14].
Lemma 4.1. Assume that a1 a2 · · · an · · · 0, 0 < p < 2, and set α =
2 1/2
( ∞
. Then there is a constant C = C(p) > 0, such that
j =N+1 |aj | )
1
a
C
∞
α
p 1
N σN−1 (a)
p
N
N=1
1/p
1
p
−
1
2
and σN (a) =
C a p.
The following theorem shows that localized frames possess the same approximation power as the
underlying Riesz basis. In the following we use only the trivial weight m ≡ 1 and write Hp instead
p
of Hm .
Theorem 4.2. Assume that E is s-localized with respect to the Riesz basis {gn : n ∈ N } and that s > d.
Set α = p1 − 21 > 0 for p < 2 and p0 = ds < 1. If p0 < p < 2 and f ∈ Hp , then
∞
N=1
p 1
N α σN−1 (f )
N
1/p
C f
Hp .
In particular, if f ∈ Hp and ds < p < 2, then σN (f ) = O(N −α ).
If E is exponentially localized, then (16) holds for all p, 0 < p < 2.
(16)
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E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Proof. By Theorems 2.2 and 3.3 every f ∈ Hp has the frame expansion f = x∈X f, ex ex with
coefficients c = (cx ) := (f, ex )x∈X ∈ ℓp (X ) and c p ≍ f Hp . Let |cx1 | |cx2 | |cx3 | · · · 0
be a nonincreasing rearrangement of these coefficients and set pN = N
j =1 cxj exj ∈ ΣN . Then
∞
1/2
∞
2
= CσN (c).
cxj exj C
|cxj |
σN (f ) f − pN H =
j =N+1
H
j =N+1
Since the characterization (11) of Hp (with trivial weight) holds exactly for ds < p < 2, we find that
1/p
∞
1/p
∞
1
1
p
p
C
C ′ c p C ′′ f Hp
N α σN−1 (c)
N α σN−1 (f )
N
N
N=1
N=1
after invoking Lemma 4.1. For exponentially localized frames, (15) and therefore the statement hold for
0 < p < 2. ✷
Remark 3. (1) It is an open problem for which frames the converse of (16) holds. If we use the Riesz
basis {gn } as our dictionary, then Lemma 4.1 implies immediately that
∞
1/p
1
p
≍ f Hp ,
N α σN (f )
N
N=1
see [14]. To prove this equivalence for frames, we would need a Bernstein-type inequality for finite linear
combinations of frame elements. However, a recent example of Gribonval and Nielsen [22] shows that
the converse inequality in (16) need not be true even for exponentially localized frames and that the
approximation space of a localized frame may be strictly larger than the approximation space of the
underlying basis.
(2) For another interpretation of Theorem 4.2 and a much more general theory of nonlinear
approximation the reader should consult the work of Gribonval and Nielsen [20,21].
(3) Note that for polynomial localization, there is a saturation effect in the approximation power, given
by p0 = ds < 1, whereas for exponential localization this does not happen.
(4) At this time it is not clear how the redundancy affects the properties of N -term approximation.
This seems an interesting question in its own right.
5. Convergence of the iterative frame algorithm
For a frame with frame bounds A, B > 0, the inverse frame operator can be calculated (at least in
principle) by the Neumann series
S −1 = α
∞
(I − αS)k
(17)
k=0
for arbitrary relaxation parameter α < 2/B [15]. This geometric series converges in the operator norm of
B(H). It is useful to recast the frame reconstruction as an iterative algorithm as follows:
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
f0 = Sf =
39
f, ex ex ,
x∈X
fn+1 = fn + αS(f − fn ),
n 0.
(18)
Then f = limn→∞ fn is the reconstruction of f from the frame coefficients f, ex .
In practice, much more efficient algorithms are used, for instance, conjugate gradient acceleration
and/or exploitation of the additional structure of a frame [25,35], but (18) is still the starting point for the
analysis of iterative frame algorithms.
Therefore an important question is whether this algorithm also converges in other norms. Specifically,
p
if E is localized, does the series (17) also converge in the norm of the associated Banach spaces Hm ?
In the light of Theorem 4.2, this amounts to asking whether the iterative frame algorithm preserves the
sparsity of a representation.
Using the methods developed for localized frames so far, we can now answer this question affirmatively.
Theorem 5.1. If E is r-localized with respect to a Riesz basis for r > s + d, then the Neumann series (17)
p
p
converges in the operator norm of Hm and the iterative algorithm (18) converges in Hm for 1 p ∞
p
and all s-moderate weights m. (If E is exponentially localized, then the convergence is in Hm for all
subexponential weights.)
Proof. As for Theorem 2.1, the core of this proof is a Banach algebra argument.
Step 1. We take up the notation of Section 2. Since Γ defined by (Γf )(n) = f, gn is an isometric
p
p
isomorphism between Hm and ℓm (N ), and since S = Γ −1 T Γ from (5), the convergence of the series
p
(17) in the operator norm on Hm is equivalent to the convergence of the series
T −1 = α
∞
(I − αT )k
(19)
k=0
p
in the operator norm on ℓm (N ).
Step 2. Recall that Ar is the matrix algebra defined by the decay condition (4). Let σℓpm (A) be the
p
spectrum of the operator A acting on ℓm (N ) and rℓpm (A) = max{|λ|: λ ∈ σℓpm (A)} be the corresponding
p
spectral radius. If A ∈ Ar and λ ∈ C, then A − λI ∈ Ar is bounded simultaneously on all ℓm for
1 p ∞ and all s-moderate weights m by Lemma 3.1. Now assume that λ ∈
/ σℓ2 (A), i.e., A − λI
is invertible on ℓ2 (N ). Then Jaffard’s lemma [31] implies that (A − λI)−1 ∈ Ar and thus (A − λI)−1 is
p
also bounded on all ℓm , i.e., λ ∈
/ σℓpm (A). In conclusion, Jaffard’s lemma implies that σℓpm (A) ⊆ σℓ2 (A),
and in particular
rℓpm (A) rℓ2 (A).
(20)
Step 3. Now we apply (20) to the operator I − αT occurring in (19). The geometric series (19) converges
on ℓ2 because I − αT op = rℓ2 (I − αT ) < 1 for α < 2/B. By (20) we also have rℓpm (I − αT ) < 1.
This inequality for the spectral radius suffices to guarantee the convergence of (19) in the operator norm
p
on ℓm . ✷
40
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Remark 4. In our opinion, this statement is of immense practical importance, because the convergence
of the frame algorithm (and its accelerations) in different norms expresses a strong form of numerical
stability of the frame algorithm. Theorem 5.1 says that for data (f, ex ) in a subspace of ℓ2 (X ) the frame
algorithm converges automatically in the correct norm.
6. Localization with respect to Riesz bases with multiple generators
In applications of frame theory to shift-invariant spaces with multiple generators and to wavelet theory
in higher dimensions, we encounter Riesz bases with structured index sets. In this section we deal with
some technical modifications of the general theory and, as an example, we treat the sampling problem in
shift-invariant spaces with multiple generators. We will keep the treatment elementary, but it is certainly
possible to generalize these results further by using the concept of block bases and a vector-valued version
of localization.
We assume that the Riesz basis for H is of the form
G := {gln : n ∈ N , l = 1, . . . , L}
with dual basis {gln , n ∈ N , l = 1, . . . , L}. Thus the index set is N × F where N is a separated set in Rd
(usually a subset of Zd ) and F = {1, 2, . . . , L} is a finite set. Then we call a frame E = {ex : x ∈ X } for
H s-localized with respect to the Riesz basis G if
−s
∀x ∈ X , n ∈ N ,
(21)
max ex , gln C 1 + |x − n|
l=1,...,L
−s
max ex , gln C 1 + |x − n|
∀x ∈ X , n ∈ N .
(22)
l=1,...,L
Similarly we understand exponential localization.
The main Theorem 2.1 and its consequences do not apply directly to this variation of localization.
To study localized frames with respect to a multiply generated Riesz basis, we use a trick and some
re-indexing and reduce this situation to Theorem 2.1.
Let u ∈ Rd , |u| = 1, ǫ > 0. We define the map j : N × F → Rd by
j (l, n) = n + ǫlu ∀n ∈ N , l = 1, . . . , L.
Since N is separated, we may choose ǫ > 0 small enough, such that j is one-to-one and the new index
:= j (N × F ) ⊆ Rd is separated. If m = j (l, n) ∈ N
, we write hm = hj (l,n) := gln . Clearly, the set
set N
{hm : m ∈ N } is a Riesz basis for H, in fact, it is the same Riesz basis with relabeled index set. We check
the localization with respect to {hm }:
ex , hm = ex , gln C 1 + |x − n| −s
−s
−s
s
C ′ 1 + |x − m| .
1 + |x − m|
C max 1 + |ǫlu|
l=1,...,L
The same estimate works for the dual Riesz basis, thus the frame E is localized with respect to the Riesz
} in the sense of Definition 1. Conversely, localization with respect to the re-indexed
basis {hm : m ∈ N
Riesz basis {hm} implies localization with respect to the multiply generated Riesz basis {gln }.
Thus we can now reformulate the main Theorem 2.1 as follows.
41
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Theorem 6.1. If E is s-localized with respect to the Riesz basis {gln : n ∈ N , l = 1, . . . , L} and if s > d,
then E is also s-localized.
Likewise, if E is exponentially localized, then Eis also exponentially localized (with a possibly different
exponent in (3)).
6.1. Localization and sampling theory
Let Φ = {φj : j = 1, . . . , L} ⊆ L2 (Rd ) be a set of “generators” satisfying the following properties:
(i) The integer translates {φl (· − k): k ∈ Zd , l = 1, . . . , L} form a Riesz basis for the generated subspace
in L2 (Rd ). We also say that “Φ is a stable generator.”
(ii) Each φl is continuous.
(iii) Each φl satisfies the decay condition
φl (x) C 1 + |x| −r ∀x ∈ Rd ,
(23)
for some r > d.
Given 0 < p ∞ and an s-moderate weight function m, we define the multiply generated shiftp
invariant space Vm (Φ) as
L
L
cln φl (· − n), c ∈ ℓpm (Zd )
Vmp (Φ) = f ∈ S ′ (Rd ): f =
.
(24)
l=1 n∈Zd
p
Vm (Φ)
p
In other words,
is the (quasi)-Banach space Hm associated to the multiply generated Riesz
p
p
basis. Moreover, under the conditions stated, Vm (ϕ) is a closed subspace of Lm (Rd ) endowed with the
equivalent norms
f
p
Lm
≍ c
ℓm .
p
(25)
For the general theory of shift-invariant spaces and sampling theory we refer to [1,11,28] and references
therein.
Since V 2 (Φ) is shift-invariant, the dual basis is again of the form φ̃l (· − n), l = 1, . . . , L, n ∈ Zd for
some φ̃l ∈ V 2 (Φ). The following lemma is implicit in the literature on shift-invariant spaces, but does not
seem to be sufficiently known. Here we give a new proof that is based on the theory of localized frames.
Lemma 6.2. Under the hypotheses (i)–(iii) on Φ, the dual generators also satisfy the decay conditions
φ
l (x) C 1 + |x| −r ∀x ∈ Rd , l = 1, . . . , L.
(26)
Proof. Since a Riesz basis is also a frame, we can check the localization of the frame (Riesz basis)
{φl (· − n): n ∈ Zd , l = 1, . . . , L} with respect to itself and then apply Theorem 6.1. In the following
argument we use the easy estimate
−r
−r
−r
∀x ∈ Rd ,
(27)
1 + |t|
1 + |x − t| dt C 1 + |x|
Rd
which holds whenever r > d (see, for instance, [26, Lemma 11.1.1]).
42
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Step 1. We show that E = {φl (· − n), n ∈ Zd , l = 1, . . . , L} is r-localized with respect to itself. We have
φl (· − n), φl ′ (· − m) = δl,l ′ δmn
by definition, and
−r
−r
−r
φl (· − n), φl ′ (· − m) C
1 + |x − n|
1 + |x − m| dt C ′ 1 + |m − n|
Rd
by (23) and (27). So E is r-localized with respect to the Riesz basis E.
l (· − n)}, which in this case coincides with the
Step 2. Theorem 6.1 implies that the dual frame E = {φ
dual basis, is also r-localized with respect to E. In particular we have
φ
l , φl ′ (· − n) C 1 + |n| −r
for l, l ′ = 1, . . . , L and n ∈ Zd .
l with respect to the basis {φl (· − n)}, we obtain the desired decay estimate
Step 3. Expanding φ
L
φ
l , φl ′ (· − n) φl ′ (x − n)
l (x) =
φ
′
l =1 n∈Zd
−r
−r
−r
C ′ 1 + |x|
1 + |n|
1 + |x − n|
C
(28)
m∈Zd
for l = 1, . . . , L, where we have used the discrete version of (27) and (23) once more.
✷
The main localization theorem for sampling in multiply generated shift-invariant spaces now goes as
follows.
Theorem 6.3. Assume that the generator Φ satisfies the assumptions (i)–(iii) for r > s + d. Let m be an
d
. Assume that a relatively separated set
s-moderate weight function and p0 be the critical index p0 = r−s
d
X ⊆ R satisfies the sampling inequality
f (x)2 B f 2 ∀f ∈ V 2 (Φ)
A f 22
(29)
2
x∈X
x satisfying the following properties:
for some constants A, B > 0. Then there exist dual functions K
x satisfy the estimates
(a) Localization: The K
K
x (t) C 1 + |t − x| −r for all x ∈ X , t ∈ Rd ,
with a constant C independent of x and t.
p
(b) Local reconstruction: Every f ∈ Hm can be reconstructed by
x
f=
f (x)K
x∈X
p
with unconditional convergence in Vm (Φ) for p0 =
d
r−s
< p < ∞.
(30)
(31)
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
43
(c) Norm equivalence:
A f
p
Lm
f (x)p m(x)p
1/p
B f
p
Lm
∀f ∈ Vmp (Φ), p0 < p ∞.
(32)
x∈X
x (t)| Ce−β|t −x| for some
Remark 5. (1) For exponential localization |φj (x)| Ce−α|x| we obtain |K
β ∈ (0, α). The conclusions of Theorem 6.3 then hold for the full range 0 < p ∞ and all subexponential
weights.
(2) Since the precise nature of the functionals f → f (x) does not matter, the theorem also holds for
sampling from local averages as in [28].
Proof. Under the assumptions stated on Φ, the Hilbert space V 2 (Φ) is a reproducing kernel Hilbert
space, and there exist functions Kx ∈ V 2 (Φ) such that f (x) = f, Kx [1]. The sampling inequality (29)
simply says that {Kx : x ∈ X } is a frame for V 2 (Φ). We check the localization properties of this frame
with respect to the given Riesz basis:
Kx , φl (· − n) = φl (x − n) C 1 + |x − n| −r
for x ∈ X , n ∈ Zd , l = 1, . . . , L. Likewise, with the help of Lemma 6.2 we obtain that
−r
Kx ,
φl (· − n) =
φl (x − n) C 1 + |x − n| .
This means that Kx is r-localized with respect to the multiply generated Riesz basis {φl (· − n): n ∈ Zd ,
l = 1, . . . , L}.
x satisfies the estimates
We can now apply Theorem 2.1 and deduce that the dual frame K
K
x , φl (· − n) C ′ 1 + |x − n| −r
x , φl (· − n)φ̃l (· − n), the claimed
x = Ll=1 k∈Zd K
and the same for the dual generators φ̃l . Since K
decay (30) follows as in (28). The remaining assertions are now just a reformulation of the main
Theorems 2.2 and 3.3. ✷
7. Localized wavelet frames and Besov spaces
Finally we deal with the characterization of Besov spaces by means of wavelet frames. While theorems
of this type actually precede wavelet theory [17], a suitably formulated version of these results can now
be obtained as a simple example of the general theory of localized frames.
Wavelet frames are frames for L2 (Rd ) with a translation–dilation structure, i.e., E = {ψj kl (x) =
j d/2
2
ψl (2j x − k), j ∈ Z, k ∈ Zd , l = 1, . . . , L}. In this example the obvious type of basis to compare
with is an orthonormal wavelet basis, which is again of the form {Ψj kǫ (x) = 2j d/2 Ψǫ (2j x − k), j ∈ Z,
k ∈ Zd , ǫ = 1, . . . , 2d − 1}. For convenience we choose a Meyer type basis with wavelets Ψǫ ∈ C ∞ (Rd )
ǫ being compact [32]. It is well known that such wavelet bases are unconditional bases for all
with supp Ψ
Besov–Triebel–Lizorkin spaces. More precisely, let ℓp,q
α be the mixed norm space defined by the norm
d −1
q/p
1/q
2
p
j αq
p,q
|cj kǫ |
2
.
c ℓα =
j ∈Z
k∈Zd ǫ=1
44
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Let
Hαp,q
= f: f =
(j,k)∈Zd+1
d −1
2
cj kǫ Ψj kǫ ,
ǫ=1
c ∈ ℓp,q
α
. By the
be the Banach space associated to the Meyer-type wavelet basis with norm f Hp,q
= c ℓp,q
α
α
results in [19,23,32] we have the following identification with the homogeneous Besov spaces:
p,q
Hαp,q = Ḃα+d/p−d/2.
(33)
Theorem 7.1. Assume that {ψj kl (x) = 2j d/2 ψl (2j x − k), j ∈ Z, k ∈ Zd , l = 1, . . . , L} is a frame for
L2 (Rd ) that satisfies the localization condition
ψj kl , Ψj ′ k′ ǫ C 1 + |j − j ′ | + |k − k ′ | −s ∀j, j ′ ∈ Z, k, k ′ ∈ Zd , l, ǫ,
(34)
for some s > d + 1. Then the dual frame ψ
j kl satisfies the same localization conditions
′
′
′ −s
ψ
∀j, j ′ ∈ Z, k, k ′ ∈ Zd , l, ǫ.
j kl , Ψj ′ k ′ ǫ C 1 + |j − j | + |k − k |
(35)
p,q
Moreover, a function f ∈ L2 (Rd ) is in Ḃd/p−d/2 for p0 = d/s < p, q ∞ if and only if
1/q
p q/p
f, ψj kl
< ∞.
j ∈Z
k∈Zd , l∈F
p,q
The latter expression is an equivalent (quasi-)norm on Ḃd/p−d/2(Rd ).
p,p
Furthermore, if f ∈ Ḃd/p−d/2 for p0 = d/s < p < 2 and α = 1/p − 1/2, then
1/p
∞
p 1
α
p,p
C f Ḃd/p−d/2
,
N σN−1 (f )
N
N=1
where σN (f ) is the N -term approximation error of f with respect to the wavelet frame as in Definition 3.
Proof. We choose the index sets to be N = Zd+1 × {1, . . . , 2d − 1} and X = Zd+1 (with multiplicity
L). For p = q the result is just an explicit formulation of Theorems 2.1, 2.2, 3.3, and 6.1 for wavelet
p,p
frames and the associated Banach spaces Hp = Ḃd/p−d/2 (with weight m ≡ 1). The result on nonlinear
approximation follows from Theorem 4.2. The case p = q requires a simple adaption of Proposition 3.2
to mixed norm spaces. Since the index sets are Zd+1 , this amounts to replacing Lemma 3.1 by Young’s
min(1,p,q)
⊆ ℓp,q
theorem ℓp,q
α in the proof of Proposition 3.2. ✷
α ∗ ℓα
Remark 6. (1) Since Theorem 7.1 resembles other results in the literature (compare [17,18,24]), let us
point out some of the novelties: no assumption is made on the structure of the dual frame, in particular
it is not assumed that the dual frame is again a wavelet frame. Likewise, the frame element ψj kl need
not be of the form ψl (2j x − k), any frame satisfying (34) yields the same conclusions. This shows
that the characterization of Besov spaces is more about the localization properties of frames than about
the exact translation–dilation structure of the frames. Of course, this observation is consistent with the
characterization of Besov–Triebel–Lizorkin spaces by molecules [18,38].
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
45
(2) Condition (34) implies in particular that the wavelet ψ satisfies j,k,ǫ |ψ, Ψj kǫ | < ∞. By (33)
1,1
1,1
we have ψ ∈ Ḃd/2
[32]. Thus the localization properties describe a subspace of Ḃd/2
as the class of
admissible wavelets.
l ⊆ {x ∈ Rd : 0 < a |x| b} and |ψl (x)| = O(|x|−s ),
(3) Condition (34) is satisfied when supp ψ
because in this case ψj kl , Ψj ′ k′ ǫ = 0 for |j − j ′ | large enough. The condition is different from the
conditions of Frazier and Jawerth in [17] and [18, Sections 2 and 3], and neither implies nor is implied
by their conditions. Other conditions can be found in [24].
(4) Theorem 7.1 does not cover the entire range of Besov spaces. Using the lifting property of Besov
spaces [37, p. 241] it is possible to show the following result.
γ (ω) = |ω|γ ψ̂(ω) and fix β > 0. Assume that Eγ = {ψjγkl (t) =
Let ψ γ , γ ∈ R, be defined by ψ
γ
2j d/2 ψl (2j − k), j ∈ Z, k ∈ Zd , l = 1, . . . , L} is a frame for L2 (Rd ) for γ ∈ {0, −β, β}. If E satisfies the
localization condition
ψj kl , Ψj ′ k′ ǫ C 1 + |j − j ′ | + |k − k ′ | −s 2−β|j −j ′ | ∀j, j ′ ∈ Z, k, k ′ ∈ Zd , l, ǫ,
(36)
for some s > d + 1, then the dual frame {ψ
j kl } satisfies the same localization conditions. A distribution
p,q
f is in Ḃα+d/p−d/2 for p0 = d/s < p, q ∞ and |α| β if and only if
j ∈Z
f, ψj kl p
k∈Zd , l∈F
q/p
2αj q
1/q
< ∞.
p,q
The latter expression is an equivalent norm on Ḃα+d/p−d/2.
A detailed account of localized wavelet frames will be given elsewhere. The hypothesis that ψ ±β
generates a wavelet frame seems redundant, but so far we have not been able to remove it.
(5) The “hard analysis” of Frazier and Jawerth [18] and Meyer [33, Chapters VIII.3, 4] suggests an
alternative approach to wavelet localization. Imitating the concept of almost diagonalization of operators
with respect to wavelet bases, one may define the localization of a wavelet frame with respect to a Meyer
wavelet basis by
−j
−j ′ ′
ψj kl , Ψj ′ k′ ǫ C2−β|j −j ′ | 2−s|j −j ′ |/2 1 + |2 k − 2 k′ |
max(2−j , 2−j )
−s
∀j, j ′ ∈ Z, k, k ′ ∈ Zd , l, ǫ, (37)
for some s > d. As explained in [18, Remark 3.2], this condition amounts to an exponential decay with
respect to the hyperbolic metric on the upper half space H = Rd × R+ . More precisely, we identify
(j, k) ∈ Zd+1 with the point λ = (2−j k, 2−j ) ∈ H and endow H with a metric d that is right invariant
under the (ax + b)-group; see [18, p. 53] for the exact formula. Then (37) can be written as
ψj kl , Ψj ′ k′ ǫ C2−β|j −j ′ | e−sd(λ,λ′) ,
i.e., exponential localization with respect to a different metric on the index set. While this approach lacks
the simplicity of Theorem 7.1, it might lead to more profound results; in particular, we would expect that
this type of localization also yields characterizations of the Triebel–Lizorkin spaces.
46
E. Cordero, K. Gröchenig / Appl. Comput. Harmon. Anal. 17 (2004) 29–47
Acknowledgments
This work was done while E.C. was visiting the University of Connecticut in October 2002. We thank
Akram Aldroubi for a stimulating discussion that motivated Section 5, and Chris Heil whose thoughtful
and constructive comments lead to a revision of the Introduction.
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