YoVDO

Nonlinear Spectral Decompositions in Imaging and Inverse Problems

Offered By: Society for Industrial and Applied Mathematics via YouTube

Tags

Applied Mathematics Courses Data Science Courses Banach Spaces Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore nonlinear spectral decompositions in imaging and inverse problems through this virtual seminar talk by Martin Burger from FAU. Delve into a variational theory that extends classical spectral decompositions in linear filters and singular value decomposition of linear inverse problems to a nonlinear regularization setting in Banach spaces. Discover applications in imaging and data science, and learn about the computation of nonlinear eigenfunctions using gradient flows and power iterations. This one-hour talk, part of the IMAGINE OneWorld SIAM-IS Virtual Seminar Series, offers valuable insights for researchers and professionals in the fields of applied mathematics, imaging, and data science.

Syllabus

Eighth Imaging & Inverse Problems (IMAGINE) OneWorld SIAM-IS Virtual Seminar Series Talk


Taught by

Society for Industrial and Applied Mathematics

Related Courses

Applied Calculus with Python
Johns Hopkins University via Coursera
Business Calculus
Cabrillo College via California Community Colleges System
Introduction to Dynamical Systems and Chaos
Santa Fe Institute via Complexity Explorer
Data Science Decisions in Time
Johns Hopkins University via Coursera
Introduction to Engineering Mathematics with Applications
University of Texas Arlington via edX