YoVDO

On the Use of Machine Learning for Computational Imaging

Offered By: Institute for Pure & Applied Mathematics (IPAM) via YouTube

Tags

Computational Imaging Courses Machine Learning Courses Regularization Courses

Course Description

Overview

Explore the intersection of machine learning and computational imaging in this 44-minute lecture by George Barbastathis from the Massachusetts Institute of Technology. Delve into the complexities of using supervised machine learning for computational inverse problems, examining the role of regularization in overcoming ill-conditionedness and ill-posedness. Investigate key questions such as whether to explicitly include physics captured in the forward operator into learning architectures or build all-encompassing black boxes. Address challenges like partially known forward operators and the high cost of obtaining sufficient experimental training pairs. Gain insights from implementations of machine learning-aided inverses in three classical inverse problems: electromagnetic field phase retrieval from intensity, 3D dielectric structure retrieval from limited-angle intensity projections, and quantitative analysis of highly scattering surfaces. Consider future directions for joint optimization of forward operators and machine learning inverses to enhance robustness against noise and uncertainties.

Syllabus

George Barbastathis - On the use of machine learning for computational imaging - IPAM at UCLA


Taught by

Institute for Pure & Applied Mathematics (IPAM)

Related Courses

A Photoacoustic Airborne Sonar System
Paul G. Allen School via YouTube
A Function Space View of Overparameterized Neural Networks - Rebecca Willet, University of Chicago
Alan Turing Institute via YouTube
Computational Imaging and Mask-Based Techniques - SPACE West Webinar
IEEE Signal Processing Society via YouTube
Computational Imaging Systems and Optical Design - Webinar
IEEE Signal Processing Society via YouTube
Neural Imaging and Computational Displays - SPACE Webinar Series
IEEE Signal Processing Society via YouTube