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Certainty & Uncertainty in Filter Bank Design Methodology

Certainty & Uncertainty in Filter Bank Design Methodology. Chen Sagiv. Joint work with: . Nir Sochen Yehoshua Zeevi Peter Maass & Dirk Lorenz Stephan Dahlke. The Motivation: Maximal Accuracy Minimal Uncertainty. scale. location. frequency. orientation.

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Certainty & Uncertainty in Filter Bank Design Methodology

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  1. Certainty & Uncertainty in Filter Bank Design Methodology Chen Sagiv

  2. Joint work with: Nir Sochen Yehoshua Zeevi Peter Maass & Dirk Lorenz Stephan Dahlke

  3. The Motivation: Maximal Accuracy Minimal Uncertainty scale location frequency orientation

  4. The Motivation Image features

  5. The Motivation • Signal & Image Processing applications call for: • “optimal” mother-wavelet • “optimal” filter bank • Possible criteria for optimality: • The “optimal” mother-wavelet provides maximal accuracy - minimal uncertainty • The “optimal” filter bank constitutes a tight frame

  6. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  7. The Uncertainty Principle – Quantum Mechanics View • “The more precisely the position is determined, the less precisely the momentum is known in this instant, and vice versa.” Heisenberg, uncertainty paper 1927 Werner Heisenberg 1927

  8. The Uncertainty Principle – Signal Processing View Signal Fourier Transform of Signal

  9. There is no such thing as instantaneous frequency

  10. The Short-Time Fourier Transform (STFT)

  11. Dennis Gabor 1969 The Uncertainty Principle – Signal Processing View • The Gaussian-modulated complex exponentials: Gabor functions achieve maximal accuracy – minimal uncertainty

  12. The Uncertainty Principle – Harmonic Analysis View • S, T are self-adjoint operators. • < P > Ψ = < PΨ , Ψ > : mean of the action of operator P • [S,T]=ST-TS commutator • Then the following holds: SΨ * TΨ  0.5 * | < [S,T] >Ψ|

  13. Minimizers of the joint uncertainty • The inequality turns into equality iff there exists i such that: ( S - < S > )  =  ( T - < T > )  •  is the minimizer of the uncertainty principle

  14. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  15. G = (w,b) | b,w   • Group Law: (w,b)° (w’,b’) =(w+w’,b+b’) • Unitary irreducible representation • The windowed Fourier Transform: Windowed Fourier Transform Weyl-Heisenberg Group

  16. The Weyl-Heisenberg Group: Generators Commutation Relation

  17. The minimizer of the 1D Weyl-Heisenberg Group • From the constraint for equality, we obtain the following ODE: • with a solution:

  18. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  19. 1D Wavelet Transform 1D Affine Group • A = {(a,b) | a,b  , a  0} • Group Law: • (a,b)° (a’,b’) =(aa’,ab’+b) • Unitary irreducible representation:

  20. 1D Wavelet Transform 1D Affine Group • Minimizer of uncertainty (Dahlke & Maass): Imaginary Real

  21. 2D Wavelet Transform 2D Similitude Group • B = (a,b,)| a+, b 2,  SO(2) • Group Law: • (a,b,)° (a’,b’, ’) =(aa’,a  b’+b, +’) •  (x,y) = (x cos() – ysin(), x sin() + ycos()) • Unitary irreducible representation: No non-zero minimizer

  22. Solution 1: Dahlke & Maass • Adding elements of the enveloping algebra. • Considering: T, Ta, • A possible solution is the Mexican hat function: • (r)= [2-2r2]exp(- r2 ) .

  23. Solution 2: Ali, Antoine, Gazeau • [Ta , Tb1] & [T , Tb2 ] [Ta , Tb2] & [T , Tb1 ] • Define a new operator: • Find a minimizer for: [Ta , T ] and [T , T+/2 ]with respect to a fixed direction .

  24. s increases Ali, Antoine, Gazeau • The 1D solution in Fourier Space: • Cauchy Wavelets : ()= c s exp(- ) • The 2D solution in Fourier Space: (k)= c |k|s exp(- kx), s > 0,  > 0, kx > 0  increases Solution in the time domain s increases  increases Solution in the spatial domain

  25. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  26. The 2D Affine Group • B = (s11,s12,s21,s22,b1,b2)| all  • Unitary irreducible representation:

  27. “Solution” #1: Going back to SIM(2) • Adapting the solutions of Dahlke & Maass and Ali, Antoine, Gazeau: • Total orientation: T = Ts12 – Ts21 • Total Scale: Tscale = Ts11 + Ts22

  28. “Solution” #2: Subspace Solution [Ts11,Ts12],[Ts11,Ts21], [ Ts11,Tb1], [Ts12,Tb2] [Ts22,Ts21],[Ts22,Ts12], [ Ts22,Tb2], [Ts21,Tb1]   i, s.t.

  29. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  30. Gabor Wavelets Transform AWH Group • The Gabor-Wavelet Transform: • B = (, a, b)| , a+, b 2 • Problem: This representation is not square integrable • Solution: work with quotients.

  31. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  32. The G Group(Torresani) • Unitary irreducible representation: • The Generators: • The Solution:

  33. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  34. Modern Frame Theory in Banach Spaces (Feichtinger & Grochenig) • A group G in a Hilbert space H • An associated generalized integral transform • The Coorbit-Spaces (Lp space) • Discretization of the representation Frames • Example: • The Euclidean Plane and the Weyl-Heisenberg & Wavelets frames

  35. Generalization of the Feichtinger/Grochenig theory to quotient spaces(Dahlke, Fornasier, Rauhut, Steidel, Teschke) • Coorbit Spaces associated with Affine Group  Besov Spaces • Coorbit Spaces associated with WH Group  Modulation Spaces • Coorbit Spaces associated with Affine WH Group  - modulation spaces

  36. The 1D AWH group w.r.t. the -modulation spaces • The section: a =  (( leads to the representation: • We select: a =  (( = ( 1 + ‖‖p (- • The representation is then given by:

  37. The selection of the section

  38. The 1D AWH group w.r.t. the -modulation spaces • The infinitesimal generators: • The solution obtained is:

  39. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • A Gabor-wavelet flavored solution • Conclusions & Future Work

  40. Possible Solution: Gabor-Wavelet • What about the representation: • where: (a) = 1/a • The Generators are then:

  41. Numerical Solution:

  42. The quest for the “optimal” function • The many faces of the Uncertainty Principle • A case study: The Weyl-Heisenberg Group • Previous Studies • The 2D Affine Group • The 1D Affine Weyl-Heisenberg Group • The G Solution • The -modulation spaces solution • Conclusions & Future Work

  43. Summary • Minimizers for the Affine Group in 2D • Minimizers for the Affine Weyl-Heisenberg group in 1D • Inerpolating between Fourier and Wavelet Transforms using -modulation spaces • Obtaining the uncertainty minimizers in a constrained environment Future Work

  44. Thank You http://www.tau.ac.il/~chensagi

  45. Our motivation: Gabor Space Active Contours Sochen, Kimmel & Malladi

  46. The Uncertainty Principle for G • The ODE: • The Solution: where

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