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Published byJames Sullivan Modified over 9 years ago
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Multiresolution analysis and wavelet bases Outline : Multiresolution analysis The scaling function and scaling equation Orthogonal wavelets Biorthogonal wavelets Properties of wavelet bases A trous algorithm Pyramidal algorithm
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The Continuous Wavelet Transform decomposition wavelet
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The Continuous Wavelet Transform Example :The mexican hat wavelet
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The Continuous Wavelet Transform reconstruction admissible wavelet : simpler condition : zero mean wavelet Practically speaking, the reconstruction formula is of no use. Need for discrete wavelet transforms wich preserve exact reconstruction.
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The Haar wavelet A basis for L 2 ( R) : Averaging and differencing
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The Haar wavelet
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is the scaling function. It’s a low pass filter. A sequence of embedded approximation subsets of L 2 ( R) : The Haar multiresolution analysis : with : And a sequence of orthogonal complements, details’ subspaces : such that a basis in is given by :
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The Haar multiresolution analysis Example :
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The Haar multiresolution analysis
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Two 2-scale relations : Defines the wavelet function.
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Orthogonal wavelet bases (1) Find an orthogonal basis of : Two-scale equations : orthogonality requires : if k = 0, otherwise = 0 N : number of vanishing moments of the wavelet function
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= ( ) Orthogonal wavelet bases (2) Other way around, find a set of coefficients that satisfy the above equations. Since the solution is not unique, other favorable properties can be asked for : compact support, regularity, number of vanishing moments of the wavelet function. then solve the two-scale equations. Example : Daubechies seeks wavelets with minimum size compact support for any specified number of vanishing moments. The Daubechies D2 scaling and wavelet functions
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Most wavelets we use can’t be expressed analytically. Orthogonal wavelet bases (2) Other way around, find a set of coefficients that satisfy the above equations. Since the solution is not unique, other favorable properties can be asked for : compact support, regularity, number of vanishing moments of the wavelet function. then solve the two-scale equations. Example : Daubechies seeks wavelets with minimum size compact support for any specified number of vanishing moments. The Daubechies D2 scaling and wavelet functions
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Fast algorithms (1) we start with we want to obtain we use the following relations between coefficients at different scales: reconstruction is obtained with :
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Fast algorithms using filter banks
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2D Orthogonal wavelet transform
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Example :
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Biorthogonal Wavelet Transform :
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The structure of the filter bank algorithm is the same.
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Wavelet Packets
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Scale 1 Scale 2 Scale 3 Scale 4 Scale 5 h h h h h WT
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