Wavelet-Based Segmentation on the Sphere
Xiaohao Cai, Christopher G. R. Wallis, Jennifer Y. H. Chan, and Jason, D. McEwen

TL;DR
This paper introduces a wavelet-based segmentation method tailored for spherical images, effectively capturing directional features and outperforming traditional methods like K-means in accuracy and efficiency.
Contribution
It extends wavelet-based segmentation techniques to spherical data, incorporating various wavelet frames to handle directional and curvilinear features on the sphere.
Findings
Superior segmentation accuracy on real spherical images
Effective in capturing directional and curvilinear features
Fast convergence within few iterations
Abstract
Segmentation, a useful/powerful technique in pattern recognition, is the process of identifying object outlines within images. There are a number of efficient algorithms for segmentation in Euclidean space that depend on the variational approach and partial differential equation modelling. Wavelets have been used successfully in various problems in image processing, including segmentation, inpainting, noise removal, super-resolution image restoration, and many others. Wavelets on the sphere have been developed to solve such problems for data defined on the sphere, which arise in numerous fields such as cosmology and geophysics. In this work, we propose a wavelet-based method to segment images on the sphere, accounting for the underlying geometry of spherical data. Our method is a direct extension of the tight-frame based segmentation method used to automatically identify tube-like…
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