[Colloquium] CS Seminar March 8: Rana Hanocka, Tel Aviv University

Sandra Wallace swallace at cs.uchicago.edu
Fri Feb 26 09:02:02 CST 2021


UNIVERSITY OF CHICAGO
DEPARTMENT OF COMPUTER SCIENCE
SEMINAR:
 


Rana Hanocka
Tel Aviv University

Monday, March 8th at 11:30 am

Join via zoom (enables questions):
https://uchicago.zoom.us/j/91297401671?pwd=ZFRqazR0Sko3YS9KeWVjVDV0NkQ2dz09 <https://uchicago.zoom.us/j/91297401671?pwd=ZFRqazR0Sko3YS9KeWVjVDV0NkQ2dz09>
Passcode:  uccs2021
 
Or

Watch via live stream:
http://live.cs.uchicago.edu/ranahanocka/ <http://live.cs.uchicago.edu/ranahanocka/>

Title:  Artificial Intelligence for Geometry Processing

Abstract: Demand for geometry processing is higher than ever, given the continuously and exponentially growing amount of captured 3D data (with depth-sensing cameras now prevalent in smartphones, robots, drones, and cars). Yet, in practice, current geometry processing techniques struggle to automatically and robustly analyze real-world data, even in small volumes. Deep learning, the most popular form of artificial intelligence, has been remarkably effective in extracting patterns from voluminous data, thus generating significant scientific interest in its applicability to 3D geometric data. However, despite the inspiring success of deep learning on large sets of Euclidean data (such as text, images, and video), extending deep neural networks to non-Euclidean, irregular 3D data has proven to be both ambiguous and highly challenging.

This talk will present my research into developing deep learning techniques that enable effective operation on irregular geometric data. I will demonstrate how we can leverage the representational power of neural networks to solve complex geometry processing problems, including surface reconstruction and geometric modeling/synthesis. I will conclude by highlighting open research directions aligned with my focus on designing 3D machine learning techniques that can both facilitate the robust processing of real-world geometric data and improve ease-of-use in downstream applications.

Bio:  Rana Hanocka is a Ph.D. candidate at Tel Aviv University under the supervision of Daniel Cohen-Or and Raja Giryes. Rana obtained an M.Sc. in Electrical Engineering from Tel Aviv University and a B.Sc. in Electrical Engineering from Rensselaer Polytechnic Institute. Rana is the recipient of the Dan David Prize's 2020 Scholarship in Artificial Intelligence, and was awarded the Outstanding Data Science Fellowship by Israel’s Council for Higher Education. Webpage: https://www.cs.tau.ac.il/~hanocka/ <https://www.cs.tau.ac.il/~hanocka/>

Host:  Michael Maire

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