The purpose of this paper is to study the relationships between the support of a refinable distribution , and the global and local linear independence of the integer translates of ,. It has been shown elsewhere that a compactly supported distribution , has globally independent integer translates if
Stability and Independence for Multivariate Refinable Distributions
β Scribed by Thomas A. Hogan
- Publisher
- Elsevier Science
- Year
- 1999
- Tongue
- English
- Weight
- 250 KB
- Volume
- 98
- Category
- Article
- ISSN
- 0021-9045
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β¦ Synopsis
Due to their so-called time-frequency localization properties, wavelets have become a powerful tool in signal analysis and image processing. Typical constructions of wavelets depend on the stability of the shifts of an underlying refinable function. In this paper, we derive necessary and sufficient conditions for the stability of the shifts of certain compactly supported refinable functions. These conditions are in terms of the zeros of the refinement mask. Our results are actually applicable to more general distributions which are not of function type, if we generalize the notion of stability appropriately. We also provide a similar characterization of the (global) linear independence of the shifts. We present several examples illustrating our results, as well as one example in which known results on box splines are derived using the theorems of this paper.
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