Inversion of Magnetic Data using Learned Dictionaries and Scale Space
Shadab Ahamed, Simon Ghyselincks, Pablo Chang Huang Arias, Julian, Kloiber, Yasin Ranjbar, Jingrong Tang, Niloufar Zakariaei, Eldad Haber

TL;DR
This paper introduces a novel magnetic data inversion method combining learned dictionaries and scale-space techniques to improve subsurface modeling accuracy and robustness against noise in geophysical applications.
Contribution
It presents a data-driven inversion approach that integrates adaptive learned dictionaries with multi-scale representations, enhancing the recovery of complex geological features.
Findings
Significant improvement in reconstruction accuracy over traditional methods
Enhanced robustness to noise through scale-space integration
Demonstrated effectiveness on synthetic geological datasets
Abstract
Magnetic data inversion is an important tool in geophysics, used to infer subsurface magnetic susceptibility distributions from surface magnetic field measurements. This inverse problem is inherently ill-posed, characterized by non-unique solutions, depth ambiguity, and sensitivity to noise. Traditional inversion approaches rely on predefined regularization techniques to stabilize solutions, limiting their adaptability to complex or diverse geological scenarios. In this study, we propose an approach that integrates variable dictionary learning and scale-space methods to address these challenges. Our method employs learned dictionaries, allowing for adaptive representation of complex subsurface features that are difficult to capture with predefined bases. Additionally, we extend classical variational inversion by incorporating multi-scale representations through a scale-space framework,…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Geophysical and Geoelectrical Methods
