Computational Imaging Group

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Computational Imaging Group (CIG) at Washington University in St. Louis. Computational Imaging, Biomedical Imaging, Optimization, and Deep Learning. Group leader @kmlv.
Websitehttps://cigroup.wustl.edu/
Twitterhttps://twitter.com/wustlcig
A tutorial on Plug-and-Play Models for Computational Imaging is out in IEEE Signal Processing Magazine. It traces PnP roots, describes major variants, summarizes key results, and discusses imaging applications.
✫ Read here: https://wustl-cig.github.io/spmpnp
Plug-and-Play Methods for Integrating Physical and Learned Models in Computational Imaging

Plug-and-Play Methods for Integrating Physical and Learned Models in Computational Imaging

New paper "Coordinate-Based Seismic Interpolation in Irregular Land Survey: A Deep Internal Learning Approach" presents a new method for data-driven representation of 3D seismic volumes given irregularly sampled data. https://arxiv.org/abs/2211.11889
Coordinate-Based Seismic Interpolation in Irregular Land Survey: A Deep Internal Learning Approach

Physical and budget constraints often result in irregular sampling, which complicates accurate subsurface imaging. Pre-processing approaches, such as missing trace or shot interpolation, are typically employed to enhance seismic data in such cases. Recently, deep learning has been used to address the trace interpolation problem at the expense of large amounts of training data to adequately represent typical seismic events. Nonetheless, state-of-the-art works have mainly focused on trace reconstruction, with little attention having been devoted to shot interpolation. Furthermore, existing methods assume regularly spaced receivers/sources failing in approximating seismic data from real (irregular) surveys. This work presents a novel shot gather interpolation approach which uses a continuous coordinate-based representation of the acquired seismic wavefield parameterized by a neural network. The proposed unsupervised approach, which we call coordinate-based seismic interpolation (CoBSI), enables the prediction of specific seismic characteristics in irregular land surveys without using external data during neural network training. Experimental results on real and synthetic 3D data validate the ability of the proposed method to estimate continuous smooth seismic events in the time-space and frequency-wavenumber domains, improving sparsity or low rank-based interpolation methods.

arXiv.org
Computational Imaging Group (CIG), Spring 2022