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Call for Papers: Deep Learning Methods for Inverse Problems, Â鶹´«Ã½Ó³»­ Journal on Selected Areas in Information Theory
This special issue aims to advance cutting-edge research in deep learning methods for inverse problems, with an emphasis on its intersection with information theory.
Apr 17, 2022

Â鶹´«Ã½Ó³»­ Journal on Selected Areas in Information Theory (JSAIT)

Editor-in-Chief: Tara Javidi (University of California, San Diego)

Call for Papers

Deep learning methods have emerged as highly successful tools for solving inverse problems. They achieve state-of-the-art performance on tasks such as image denoising, inpainting, super-resolution, and compressive sensing. They are also starting to be used in inverse problems beyond imaging, including for solving inverse problems arising in communications, signal processing, and even on non-Euclidean data such as graphs. However, a wide range of important theoretical and practical questions remain unsolved or even completely open, including precise theoretical guarantees for signal recovery, robustness and out-of-distribution generalization, architecture design, and domain-specific applications and challenges. This special issue aims to advance cutting-edge research in this area, with an emphasis on its intersection with information theory.

Prospective authors are invited to submit original manuscripts on topics including but not limited to:

  • Information-theoretic limits of deep inverse problems
  • Reconstruction and generalization guarantees for deep-learning based signal recovery
  • Deep generative priors
  • Untrained neural networks
  • End-to-end learning and learning-based decoding techniques
  • Learning-based measurement strategies
  • Self-supervised methods for signal recovery
  • Robustness to adversarial noise and distribution shift
  • Architecture design for deep inverse problems
  • Deep learning methods for communications and coding

Overseeing Senior Editor: Yonina Eldar (Weizmann Institute of Science)

Guest Editors:

  • Reinhard Heckel (Technical University of Munich)
  • Jonathan Scarlett (National University of Singapore)
  • Paul Hand (Northeastern University)
  • Rebecca Willett (University of Chicago)
  • Mahdi Soltanolkotabi (University of Southern California)
  • Piya Pal (University of California, San Diego)
  • Alex Dimakis (University of Texas at Austin)

Key Dates:

  • Manuscript Due: May 15, 2022
  • Acceptance Notification: October 1, 2022
  • Final to Publisher: November 1, 2022
  • Expected Publication: December 2022