Workshop: Workshop on Deep Learning and Inverse Problems
Reinhard Heckel, Paul Hand, Richard Baraniuk, Lenka Zdeborová, Soheil Feizi
Fri, Dec 11th @ 15:30 GMT – Sat, Dec 12th @ 00:00 GMT
Abstract: Learning-based methods, and in particular deep neural networks, have emerged as highly successful and universal tools for image and signal recovery and restoration. They achieve state-of-the-art results on tasks ranging from image denoising, image compression, and image reconstruction from few and noisy measurements. They are starting to be used in important imaging technologies, for example in GEs newest computational tomography scanners and in the newest generation of the iPhone.
The field has a range of theoretical and practical questions that remain unanswered. In particular, learning and neural network-based approaches often lack the guarantees of traditional physics-based methods. Further, while superior on average, learning-based methods can make drastic reconstruction errors, such as hallucinating a tumor in an MRI reconstruction or turning a pixelated picture of Obama into a white male.
This virtual workshop aims at bringing together theoreticians and practitioners in order to chart out recent advances and discuss new directions in deep neural network-based approaches for solving inverse problems in the imaging sciences and beyond. NeurIPS, with its visibility and attendance by experts in machine learning, offers the ideal frame for this exchange of ideas. We will use this virtual format to make this topic accessible to a broader audience than the in-person meeting is able to as described below.
The field has a range of theoretical and practical questions that remain unanswered. In particular, learning and neural network-based approaches often lack the guarantees of traditional physics-based methods. Further, while superior on average, learning-based methods can make drastic reconstruction errors, such as hallucinating a tumor in an MRI reconstruction or turning a pixelated picture of Obama into a white male.
This virtual workshop aims at bringing together theoreticians and practitioners in order to chart out recent advances and discuss new directions in deep neural network-based approaches for solving inverse problems in the imaging sciences and beyond. NeurIPS, with its visibility and attendance by experts in machine learning, offers the ideal frame for this exchange of ideas. We will use this virtual format to make this topic accessible to a broader audience than the in-person meeting is able to as described below.
Chat
To ask questions please use rocketchat, available only upon registration and login.
Schedule
15:30 – 15:55 GMT
Newcomer presentation
Reinhard Heckel, Paul Hand
15:55 – 16:00 GMT
Opening Remarks
Reinhard Heckel, Paul Hand, Soheil Feizi, Lenka Zdeborová, Richard Baraniuk
16:00 – 16:30 GMT
Victor Lempitsky - Generative Models for Landscapes and Avatars
Victor Lempitsky
16:30 – 17:00 GMT
Thomas Pock - Variational Networks
Thomas Pock
17:00 – 17:15 GMT
Risk Quantification in Deep MRI Reconstruction
Vineet Edupuganti
17:15 – 17:30 GMT
GAN2GAN: Generative Noise Learning for Blind Denoising with Single Noisy Images
Sungmin Cha
17:30 – 18:00 GMT
Discussion
18:00 – 18:30 GMT
Rebecca Willett - Model Adaptation for Inverse Problems in Imaging
Rebecca Willett
18:30 – 19:00 GMT
Stefano Emron - Generative Modeling via Denoising
Stefano Ermon
19:00 – 19:15 GMT
Compressed Sensing with Approximate Priors via Conditional Resampling
Ajil Jalal
19:15 – 19:30 GMT
Chris Metzler - Approximate Message Passing (AMP) Algorithms for Computational Imaging
Christopher A Metzler
19:30 – 20:00 GMT
Discussion
21:00 – 22:00 GMT
Poster Session
22:00 – 22:30 GMT
Peyman Milanfar - Denoising as Building Block Theory and Applications
Peyman Milanfar
22:30 – 23:00 GMT
Rachel Ward
Rachel Ward
23:00 – 23:30 GMT
Larry Zitnick - fastMRI
Larry Zitnick
Fri, Dec 11th @ 23:30 GMT – Sat, Dec 12th @ 00:00 GMT