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Multiresolution local smoothness detection in non-uniformly sampled multivariate signals

Multiresolution local smoothness detection in non-uniformly sampled multivariate signals

来源:Arxiv_logoArxiv
英文摘要

Inspired by edge detection based on the decay behavior of wavelet coefficients, we introduce a (near) linear-time algorithm for detecting the local regularity in non-uniformly sampled multivariate signals. Our approach quantifies regularity within the framework of microlocal spaces introduced by Jaffard. The central tool in our analysis is the fast samplet transform, a distributional wavelet transform tailored to scattered data. We establish a connection between the decay of samplet coefficients and the pointwise regularity of multivariate signals. As a by product, we derive decay estimates for functions belonging to classical Hölder spaces and Sobolev-Slobodeckij spaces. While traditional wavelets are effective for regularity detection in low-dimensional structured data, samplets demonstrate robust performance even for higher dimensional and scattered data. To illustrate our theoretical findings, we present extensive numerical studies detecting local regularity of one-, two- and three-dimensional signals, ranging from non-uniformly sampled time series over image segmentation to edge detection in point clouds.

Sara Avesani、Gianluca Giacchi、Michael Multerer

数学

Sara Avesani,Gianluca Giacchi,Michael Multerer.Multiresolution local smoothness detection in non-uniformly sampled multivariate signals[EB/OL].(2025-07-17)[2025-08-10].https://arxiv.org/abs/2507.13480.点此复制

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