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Deep-learning approaches to denoising achieve impressive results when trained on standard image-processing datasets in a supervised fashion. However, unleashing their potential in practice will require developing unsupervised or semi-supervised approaches capable of learning from real data, as well as understanding the strategies learned by these models to perform denoising. In this talk, we will describe recent advances in this direction motivated by a real-world application to electron microscopy.

*Join Zoom Meeting*
https://maths-cam-ac-uk.zoom.us/j/97537214061?pwd=MmthTUpDK1VVQ2RoWG8wU3...

Meeting ID: 975 3721 4061
Passcode: 010263

Further information

Time:

01Dec
Dec 1st 2021
14:00 to 15:00

Venue:

Virtual (Zoom details under abstract)

Speaker:

Carlos Fernandez-Granda (NYU)

Series:

CCIMI Seminars