Unlocking the Power of Deep Learning in Computational Imaging with Felix Lucka 🌟
Join Felix Lucka from CWI Amsterdam for an insightful seminar on how deep learning is revolutionizing computational imaging. Part of the MaLGa Seminar Series and Ellis Genoa activities, this talk explores cutting-edge analysis and learning techniques.

MaLGa - Machine Learning Genoa Center
225 views • Nov 9, 2021

About this video
MaLGa Seminar Series - Analysis and Learning
This event is part of the Ellis Genoa activities.
Speaker: Felix Lucka
Affiliation: CWI Amsterdam
Title: Deep Learning in Computational Imaging
Abstract:
Due to its remarkable success for a variety of complex image processing problems, Deep Learning is nowadays also more commonly used in the domain of computational image reconstruction and inverse problems. In this talk, we will highlight some of the challenges and potential solutions of integrating Deep Learning into computational imaging work-flows found in scientific, clinical or industrial applications using imaging modalities such as X-ray CT, Magnetic Resonance Imaging, Photoacoustic Tomography and Ultrasound.
Short Bio:
After obtaining a first degree in mathematics and physics in 2011, Felix Lucka did a PhD in applied mathematics at WWU Münster (Germany), which included a research visit at UCLA, followed by a postdoc at UCL. Since 2017, he is a tenure track researcher in the Computational Imaging group at the Centrum Wiskunde & Informatica (CWI, Amsterdam). His main interests are mathematical challenges arising from biomedical imaging applications that have a classical inverse problem described by partial differential equations at their core.
This event is part of the Ellis Genoa activities.
Speaker: Felix Lucka
Affiliation: CWI Amsterdam
Title: Deep Learning in Computational Imaging
Abstract:
Due to its remarkable success for a variety of complex image processing problems, Deep Learning is nowadays also more commonly used in the domain of computational image reconstruction and inverse problems. In this talk, we will highlight some of the challenges and potential solutions of integrating Deep Learning into computational imaging work-flows found in scientific, clinical or industrial applications using imaging modalities such as X-ray CT, Magnetic Resonance Imaging, Photoacoustic Tomography and Ultrasound.
Short Bio:
After obtaining a first degree in mathematics and physics in 2011, Felix Lucka did a PhD in applied mathematics at WWU Münster (Germany), which included a research visit at UCLA, followed by a postdoc at UCL. Since 2017, he is a tenure track researcher in the Computational Imaging group at the Centrum Wiskunde & Informatica (CWI, Amsterdam). His main interests are mathematical challenges arising from biomedical imaging applications that have a classical inverse problem described by partial differential equations at their core.
Video Information
Views
225
Likes
5
Duration
01:09:04
Published
Nov 9, 2021
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