Home  | Events
Teaser image to Enlarging the Capability of Diffusion Models for Inverse Problems by Guidance

Munich AI Lectures

Enlarging the Capability of Diffusion Models for Inverse Problems by Guidance

Jong Chul Ye, Graduate School of Artificial Intelligence, KAIST, Korea

   11.03.2024

   6:15 pm - 7:45 pm

   LMU Munich, Theresienstr. 39, Room B 006

The talk introduces two key innovations for enhancing diffusion models in solving inverse problems:

First, a method leveraging two perpendicular 2D diffusion models to tackle 3D problems by representing 3D data as intersecting 2D slices, addressing dimensionality challenges.

Second, a novel solver that uses text prompts to clarify ambiguities, inspired by human perception, dynamically incorporating textual guidance for more accurate solutions.

Experimental results confirm these approaches significantly improve problem-solving accuracy and reduce ambiguities.

Organized by:

baiosphere

Bavarian Academy of Science and Humanities

Helmholtz Munich

LMU Munich

TUM

AI-HUB
LMU

ELLIS Munich Unit

Konrad Zuse School of Excellence in Reliable AI

MCML

Munich Data Science Institute
TUM

Munich Institute of Robotics and Machine Intelligence
TUM


Related

Link to Data Thinning and beyond

Colloquium  •  06.05.2026  •  LMU Munich, Department of Statistics and via zoom

Data Thinning and Beyond

06.05.26, 4:15-5:45 pm: Daniela Witten from the University of Washington

Read more
Link to Analyzing Feature Interactions through Local Effects in Machine Learning Models

Lecture  •  12.06.2026  •  LMU Munich, CAS, Seestr. 13, Munich

Analyzing Feature Interactions Through Local Effects in Machine Learning Models

As part of the CAS Research Focus, Giuseppe Casalicchio talks about interpretable machine learning that develops methods.

Read more
Back to Top