Welcome back to Beyond the Patterns. So today I have the great pleasure to announce Dr.
Emil Siedke, professor at the University of Chicago. So he is an expert in CT reconstruction,
has been working for a very long time in the fields of inverse problems and iterative CT
reconstruction. Lately he started also looking into deep learning based reconstruction techniques
and this is also one of the many reasons you would invite him in order to give a presentation
here with our group. So Dr. Siedke is a research professor in the Department of Radiology of
the University of Chicago. He received his bachelor's degree in 1988 in physics, astronomy,
physics and mathematics from the University of Wisconsin-Madison. He went on to obtain
a master's degree in 1991 and a PhD in 1993 in physics from the University of Chicago.
Dr. Siedke worked as a postdoctoral research assistant in atomic physics at the University
of Copenhagen from 1993 to 1996 and the University of Bielefeld in 1996 and Kansas State University
from 1996 to 2001. In 2001 Dr. Siedke switched to medical imaging and joined the lab of Dr.
Xiaoshan Pan. Most recently he was promoted to research professor in 2018. Dr. Siedke
has published approximately a hundred papers and about 70 of them are in medical imaging.
His theoretical work has mainly focused on x-ray tomography with sparse or limited angle
sampling. He also applied advanced techniques for non-smooth or non-convex large optimization
applied to imaging. His application work has centered on tomographic breast imaging, CT
and tomosynthesis and developing image reconstruction algorithms and calibration techniques for
spectral CT scanners based on photon counting detectors. So today I am glad to announce
that we will be giving a talk entitled inverse problems in imaging and evidence for solution
by convolutional neural networks. Emil, it's a great pleasure to have you here as a guest
at least virtually and the stage is yours.
Well, thank you very much for the introduction and for inviting me for giving and giving
me this opportunity to speak to your group. So what I want to talk about today is work
that we did together with two researchers from actually I have University of Illinois.
It's actually Illinois Institute of Technology. Sorry, Oban and Iris. But anyway, Iris is
the PhD student and that we worked with and Yovon is another researcher in medical imaging
who's very knowledgeable on neural networks. And then you can also see Xiaochuan that's
my boss. All right. Anyway, this work was motivated by recent efforts and that we've
seen in the literature where you have claims that deep learning with the CNN based neural
networks can solve ill-posed inverse problems. So here you can see the first line in the
abstract of this paper from transactions image processing. In this paper we propose a novel
deep convolutional neural network based algorithm for solving ill-posed inverse problems. So
yeah, we've seen lots of these papers, but when we look inside we don't really see the
evidence that this is actually happening. I mean, we see a lot of nice images, but the
evidence for actually solving the inverse problem seems to be lacking. So this prompted
us to do our own investigation and we just finished a paper last year which is called
Do CNNs Solve the CT Inverse Problem? All right. And so this is pretty much what I'm
going to explain today in this talk is like what's the motivation in introducing this
work and showing our effort here and trying to see if CNNs do solve the CT inverse problem.
So here's the outline for the talk. First I'm going to give some background on inverse
problems. Then I'm going to talk about sparse view CT inverse problem and compressive sensing.
And the reason why I'm going to talk about that is because that's what this paper here
was using as their test subject in sparse view CT. Then I'll show some numerical results
that illustrate how we can show using compressive sensing that we can solve the sparse view
CT inverse problem. And then we're going to move on to some CNN numerical results and
discuss finally the evidence that CNN, for CNN solution of the sparse view CT inverse
problem. So let's start from the beginning and let's talk about the background on inverse
problems. So all the material that I'm talking about here, you can pretty much find in more
detail on these notes by Guillaume Ball. It's class notes entitled Introduction to Inverse
Presenters
Zugänglich über
Offener Zugang
Dauer
01:05:53 Min
Aufnahmedatum
2021-03-04
Hochgeladen am
2021-03-05 00:37:10
Sprache
en-US
It would have been great to welcome Emil to the Bergkirchweih this year. Unfortunately, the festival was cancelled. Yet, we still have the pleasure to have Emil virtually here in Erlangen!
Abstract: This talk examines the claim made in the literature that ill-posed inverse problems associated with image reconstruction in computed tomography (CT) can be solved with a convolutional neural network (CNN). To lay the groundwork, a brief overview of inverse problems will be given including a discussion on what makes an inverse problem ill-posed and what constitutes its solution. Examples of how inverse problem investigations play a role in CT image reconstruction will be presented in order to appreciate the value of the generalizable knowledge gained in such studies. Having set the stage, the talk will the discuss the evidence that deep-learning with convolutional neural networks solve the CT inverse problem. Finally, I will cover our own investigation into the use of CNNs to solve the sparse-view CT inverse problem in the context of a breast CT simulation.
Short Bio: Dr. Sidky is Research Professor in the Department of Radiology at The University of Chicago. He received his B.S. degree (1988) in Physics, Astronomy-Physics, and Mathematics from the University of Wisconsin-Madison. He went on to obtain his M.S (1991) and Ph.D (1993) in Physics from The University of Chicago. Dr. Sidky worked as a post-doctoral research assistant in Atomic Physics at the University of Copenhagen (1993-1996), University of Bielefeld (1996), and Kansas State University (1996-2001). In 2001, Dr. Sidky switched to medical imaging and joined the lab of Dr. Xiaochuan Pan; most recently, he was promoted to Research Professor in 2018. Dr. Sidky has published approximately 100 papers, and about 70 of them are in medical imaging. His theoretical work has mainly focused on X-ray tomography with sparse or limited-angular range sampling. He has also applied advanced techniques for non-smooth or non-convex large-scale optimization applied to imaging. His application work has centered on tomographic breast imaging, CT and tomosynthesis, and developing image reconstruction algorithms and calibration techniques for spectral CT scanners based on photon-counting detectors.
This video is released under CC BY 4.0. Please feel free to share and reuse.
For reminders to watch the new video follow on Twitter or LinkedIn. Also, join our network for information about talks, videos, and job offers in our Facebook and LinkedIn Groups.
Music Reference:
Damiano Baldoni - Thinking of You (Intro)
Damiano Baldoni - Poenia (Outro)