Title :
Interpolatory orthogonal multiwavelets and refinable functions
Author_Institution :
Dept. of Math., City Univ. of Hong Kong, Kowloon, China
fDate :
3/1/2002 12:00:00 AM
Abstract :
Multiwavelet bases of L2 consist of families of functions {2j/2ψ2(2jx-k)}. By allowing more than one function {ψ1,ψ2}, multiwavelets provide some useful applications in signal processing and nice features such as symmetry and orthogonality. The elementary structure for multiwavelets is the multiresolution analysis of multiplicity two {Vj} generated by dilating the basic subspace V0. This subspace V0 is generated by a multiple refinable function φ=(φ1,φ2) T (refinable vector of functions) satisfying a vector refinement equation φ(x)=Σa(k)φ(2x-k). Here, each a(k) is a 2×2 matrix. In this paper, we investigate interpolatory orthogonal multiple refinable functions and multiwavelets. The interpolatory property here means that φ1 and φ2 vanish at all integers and half integers, except that φ1 (0)=1 and φ2(1/2)=1. When φ is both interpolatory and orthogonal (which is impossible for scalar refinable functions), the coefficients in the multiresolution representation can be realized by sampling instead of inner products. If f(x)=Σ{c1(k)φ1(2Nx-k)+c2 (k)φ2(2Nx-k)}, then c1(k)=f(k/2N) and c2(k)=f(k/2N +1/2N+1) for k∈Z. What is more, the orthogonal multiwavelets we construct here are also interpolatory. We show that the refinement mask for an interpolatory orthogonal multiple refinable function and multiwavelets (filterbank) is reduced to a scalar CQF. The approximation order of interpolatory multiple refinable functions is described. A complete characterization of interpolatory orthogonal multiple refinable functions is given in this paper. However, interpolatory orthogonal multiple refinable functions cannot be symmetric. Examples are presented to illustrate the general theory
Keywords :
approximation theory; interpolation; signal representation; signal resolution; signal sampling; wavelet transforms; approximation order; filterbank; interpolatory orthogonal multiple refinable functions; interpolatory orthogonal multiwavelets; multiresolution analysis; multiresolution representation; multiwavelet bases; orthogonality; refinable functions; refinement mask; sampling; signal processing; subspace; symmetry; vector refinement equation; Digital signal processing; Equations; Filter bank; Helium; Multiresolution analysis; Refining; Sampling methods; Signal processing; Signal resolution; Signal sampling;
Journal_Title :
Signal Processing, IEEE Transactions on