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Published byShon Campbell Modified over 9 years ago
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The Lifting Scheme: a custom-design construction of biorthogonal wavelets Sweldens95, Sweldens 98 (appeared in SIAM Journal on Mathematical Analysis)
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Relations of Biorthogonal Filters
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Biorthogonal Scaling Functions and Wavelets Dual
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Wavelet Transform (in operator notation) Note that up/down-sampling is absorbed into the filter operators Filter operators are matrices encoded with filter coefficients with proper dimensions transpose
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Operator Notation
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Relations on Filter Operators Biorthogonality Exact Reconstruction Write in matrix form:
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Theorem 8 (Lifting) Take an initial set of biorthogonal filter operators A new set of biorthogonal filter operators can be found as Scaling functions and H and untouched
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Proof of Biorthogonality
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Choice of S Choose S to increase the number of vanishing moments of the wavelets Or, choose S so that the wavelet resembles a particular shape –This has important applications in automated target recognition and medical imaging
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Corollary 6. Take an initial set of finite biorthogonal filters Then a new set of finite biorthogonal filters can be found as where s( ) is a trigonometric polynomial Same thing expressed in frequency domain
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Details
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Theorem 7 (Lifting scheme) Take an initial set of biorthogonal scaling functions and wavelets Then a new set, which is formally biorthognal can be found as where the coefficients s k can be freely chosen. Same thing expressed in indexed notation
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Dual Lifting Now leave dual scaling function and and G filters untouched
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Fast Lifted Wavelet Transform Basic Idea: never explicitly form the new filters, but only work with the old filter, which can be trivial, and the S filter.
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Before Lifting Forward Transform Inverse Transform
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Examples Interpolating Wavelet Transform Biorthogonal Haar Transform
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The Lazy Wavelet Subsampling operators E (even) and D (odd)
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Interpolating Scaling Functions and Wavelets Interpolating filter: always pass through the data points Can always take Dirac function as a formal dual
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Theorem 15 The set of filters resulting from interpolating scaling functions, and Diracs as their formal dual, can be seen as a dual lifting of the Lazy wavelet.
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Algorithm of Interpolating Wavelet Transform (indexed form)
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Example: Improved Haar Increase vanishing moments of the wavelets from 1 to 2 We have
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Verify Biorthogonality Details
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Improved Haar (cont)
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g(0) = g’(0) = 0
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Verify Biorthogonality Details
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