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BIOMEDICAL IMAGING GROUP (BIG)
Laboratoire d'imagerie biomédicale (LIB)
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Seminar 00310.txt

An Introduction to Convolutional Neural Networks for Inverse Problems in Imaging
Harshit Gupta

Test Run • 09 July 2019

Abstract
Between 2011 and 2017, errors rates on the ImageNet Large-Scale Visual Recognition Challenge dropped from 25.8% to 2.25%; this improvement was driven by the development of convolutional neural networks (CNNs). Now, a plethora of CNN-based approaches are being applied to inverse problems in imaging. Should we expect the same dramatic improvements here? In this talk, I will survey some of the progress so far, including our recent work on X-ray computed tomography reconstruction.
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