DGM4MICCAI

Deep Generative Models workshop @ MICCAI 2024

Overview

Deep generative models such as Generative Adversarial Network (GAN) and Variational Auto-Encoder (VAE) are currently receiving widespread attention from not only the computer vision and machine learning communities, but also in the MIC and CAI community. These models combine the advanced deep neural networks with classical density estimation (either explicit or implicit) for achieving state-of-the-art results. DGM4MICCAI workshop at MICCAI 2024 will be all about Deep Generative Models in Medical Image Computing and Computer Assisted Interventions.

Submission Details

We seek contributions that include, but are not limited to:

  • Novel architectures, loss functions, and theoretical developments for:
    • GANs and Adversarial Learning
    • Variational Auto-Encoder
    • Disentanglement
    • Flow
    • Autoregressive models
  • Stable Diffusion Models
  • Causal generative models
  • Multi-Modality and Cross-Modality linking
  • Novel metrics and uncertainty estimates for performance assessment and interpretability of generative models
  • Generative models under limited, sparse and noisy image inputs
  • Supervised and Unsupervised Domain Adaptation, Transfer Learning and Multi-Task Learning
  • Segmentation, Detection, Synthesis, Reconstruction, Denoising, Supersampling, Registration
  • Image-to-Image translation for Synthetic Training Data Generation or Augmented Reality
  • Neural Rendering
  • Diffusion Models, Normalizing Flow Models, Invertible Networks

We particularly welcome papers driven by the theme "MIC meets CAI". Interesting novel applications of deep generative models in MIC and CAI beyond these topics are also welcome.

Workshop proceedings are published as part of Springer Nature's Lecture Notes in Computer Science (LNCS) series. Manuscripts will be reviewed in double-blinded peer-review. Please prepare your workshop papers according to the MICCAI submission guidelines (LNCS template, 8 pages maximum).
Supplementary material: PDF documents or mp4 videos, 10 MB maximum file size.

Timeline

Event Date
Paper Submission Deadline 28. June 2024
Review Release 17. July 2024
Final Decision 17. July 2024
Camera ready papers due 24. July 2024
DGM4MICCAI Workshop 10. October 2024

Program

Start End Topic Session chair

Please note that times might be subject to change, so keep an eye on the schedule or follow us on Twitter to be up-to-date.

Keynote Speaker

TBD

Oral Sessions

Long Oral

Paper IDTitle
1TBD

Short Oral

Paper IDTitle
1TBD

Organizing Committee

  • Anirban Mukhopadhyay, TU Darmstadt, Germany
  • Sandy Engelhardt, Heidelberg University, Germany
  • Ilkay Oksuz, Istanbul Technical University, Turkey
  • Dorit Merhof, Universität Regensburg, Germany
  • Yixuan Yuan, City University of Hong Kong, China
Student organizers:
  • Lalith Sharan, University Hospital Heidelberg, Germany
  • Henry Krumb, TU Darmstadt, Germany
  • Moritz Fuchs, TU Darmstadt, Germany
  • Amin Ranem, TU Darmstadt, Germany
  • John Kalkhof, TU Darmstadt, Germany
  • Yannik Frisch, TU Darmstadt, Germany
  • Caner Özer, Istanbul Technical University, Turkey

Program Committee

  • Li Wang, University of Texas at Arlington, USA
  • Tong Zhang , Peng Cheng Laboratory, Shenzhen, China
  • Ping Lu, Oxford University, UK
  • Roxane Licandro, Medical University of Vienna, Austria
  • Veronika Zimmer, TU Muenchen, Germany
  • Dwarikanath Mahapatra, Inception Institute of AI, UAE
  • Michael Sdika, CREATIS Lyon, France
  • Jelmer Wolterink, Univ. of Twente, The Netherlands
  • Subhamoy Mandal, IIT Kharagpur, India
  • Alejandro Granados, King's College London, UK
  • Jinglei Lv, The University of Sydney, Australia
  • Onat Dalmaz, Bilkent University, Turkey
  • Angshuman Paul, IIT Jodhpur, India
  • Camila González, Stanford University, USA
  • Magda Paschali, Stanford University, USA

Contact:
anirban.mukhopadhyay[at]gris.informatik.tu-darmstadt.de