کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
442325 | 692201 | 2012 | 12 صفحه PDF | دانلود رایگان |

This paper systematically studies the well-known Mexican hat wavelet (MHW) on manifold geometry, including its derivation, properties, transforms, and applications. The MHW is rigorously derived from the heat kernel by taking the negative first-order derivative with respect to time. As a solution to the heat equation, it has a clear initial condition: the Laplace–Beltrami operator. Following a popular methodology in mathematics, we analyze the MHW and its transforms from a Fourier perspective. By formulating Fourier transforms of bivariate kernels and convolutions, we obtain its explicit expression in the Fourier domain, which is a scaled differential operator continuously dilated via heat diffusion. The MHW is localized in both space and frequency, which enables space-frequency analysis of input functions. We defined its continuous and discrete transforms as convolutions of bivariate kernels, and propose a fast method to compute convolutions by Fourier transform. To broaden its application scope, we apply the MHW to graphics problems of feature detection and geometry processing.
Figure optionsDownload as PowerPoint slideHighlights
► We study Fourier transforms of bivariate kernels and convolutions on manifolds.
► We approach the manifold MHW and its transforms from a Fourier perspective.
► We formulate inverse transforms of continuous and discrete MHWs on manifolds.
► We apply the MHW to shape analysis of feature detection and geometry processing.
Journal: Graphical Models - Volume 74, Issue 4, July 2012, Pages 221–232