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Ricker wavelet

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Mexican hat

In mathematics and numerical analysis, the Ricker wavelet,[1] Mexican hat wavelet, or Marr wavelet (for David Marr) [2][3]

is the negative normalized second derivative of a Gaussian function, i.e., up to scale and normalization, the second Hermite function. It is a special case of the family of continuous wavelets (wavelets used in a continuous wavelet transform) known as Hermitian wavelets. The Ricker wavelet is frequently employed to model seismic data, and as a broad-spectrum source term in computational electrodynamics.

3D view of 2D Mexican hat wavelet

The multidimensional generalization of this wavelet is called the Laplacian of Gaussian function. In practice, this wavelet is sometimes approximated by the difference of Gaussians (DoG) function, because the DoG is separable[4] and can therefore save considerable computation time in two or more dimensions.[citation needed][dubiousdiscuss] The scale normalized Laplacian (in -norm) is frequently used as a blob detector and for automatic scale selection in computer vision applications; see Laplacian of Gaussian and scale space. The relation between this Laplacian of the Gaussian operator and the difference-of-Gaussians operator is explained in appendix A in Lindeberg (2015).[5] The Mexican hat wavelet can also be approximated by derivatives of cardinal B-splines.[6]

See also

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References

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  1. ^ "Archived copy" (PDF). Archived from the original (PDF) on 2014-12-27. Retrieved 2014-12-27.{{cite web}}: CS1 maint: archived copy as title (link)
  2. ^ http://www2.isye.gatech.edu/~brani/isyebayes/bank/handout20.pdf [bare URL PDF]
  3. ^ "13. Wavdetect Theory".
  4. ^ Fisher, Perkins, Walker and Wolfart. "Spatial Filters - Gaussian Smoothing". Retrieved 23 February 2014.{{cite web}}: CS1 maint: multiple names: authors list (link)
  5. ^ Lindeberg, Tony (2015). "Image Matching Using Generalized Scale-Space Interest Points". Journal of Mathematical Imaging and Vision. 52: 3–36. doi:10.1007/s10851-014-0541-0. S2CID 254657377.
  6. ^ Brinks R: On the convergence of derivatives of B-splines to derivatives of the Gaussian function, Comp. Appl. Math., 27, 1, 2008