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1
Intro
2
Outline
3
Acknowledgements
4
Examples: Image enhancement
5
Posterior distribution
6
Cartoon representation
7
Why use generative models for analyzing images?
8
Principal component analysis
9
Variational auto-encoders
10
MRI acquisition
11
Bayesian model for image reconstruction
12
MAP estimation with network prior
13
Advantage of generative modeling: decoupling
14
A distinction in the concept of "prior"
15
Unsupervised outlier detection
16
Restoration for outlier detection
17
Experimental details
18
ROC curves
Description:
Explore a 33-minute conference talk on Bayesian models with neural networks for medical image reconstruction and outlier detection. Delve into Ender Konukoglu's presentation from ETH Zurich at the Deep Learning and Medical Applications 2020 event, hosted by the Institute for Pure & Applied Mathematics at UCLA. Learn about network-based prior models for MRI reconstruction, the advantages of generative modeling, and unsupervised outlier detection techniques. Gain insights into topics such as image enhancement, posterior distribution, variational autoencoders, and Bayesian frameworks in medical image analysis. Examine experimental details and ROC curves to understand the practical applications of these advanced techniques in the field of medical imaging.

On Bayesian Models with Networks for Reconstruction and Detection

Institute for Pure & Applied Mathematics (IPAM)
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