Dear all,
Our next AI seminar is scheduled to be on April 19th (Friday), 2-3 PM.
The post seminar Q&A session will be held in KEC 2057. Please sign up
here
by Wednesday evening to attend the Q&A session.
Note that seminar location is
BEXL 320.
Location: BEXL 320
Zoom link:
https://oregonstate.zoom.us/j/91611213801?pwd=Wm9JSkN1eW84RUpiS2JEd0E5TEVkdz09
Equivariance in Learning for Perception
Kostas Daniilidis
Ruth Yalom Stone Professor of Computer and Information Science
University of Pennsylvania
Abstract:
Equivariant representations are crucial in various scientific and engineering domains because they encode the inherent symmetries present in physical and biological systems, thereby providing a more natural and efficient way to model
them. In the context of machine learning and perception, equivariant representations ensure that the output of a model changes in a predictable way in response to transformations of its input, such as 2D or 3D rotation or scaling. In this talk, we will show
a systematic way of how to achieve equivariance by design and how such an approach can yield efficiency in training data and model capacity. We will present examples on spherical networks, equivariant representation for point clouds, and a novel definition
of convolution and attention on lightfields.
Speaker Bio:
Kostas Daniilidis is the Ruth Yalom Stone Professor of Computer and Information Science at the University of Pennsylvania where he has been faculty since 1998. He is an IEEE Fellow. He was the director of the GRASP laboratory from
2008 to 2013, Associate Dean for Graduate Education from 2012-2016, and Faculty Director of Online Learning from 2013- 2017. He obtained his undergraduate degree in Electrical Engineering from the National Technical University of Athens, 1986, and his PhD
in Computer Science from the University of Karlsruhe, 1992, under the supervision of Hans-Hellmut Nagel. He received the Best Conference Paper Award at ICRA 2017. He co-chaired ECCV 2010 and 3DPVT 2006. His most cited works have been on event-based vision,
equivariant learning, 3D human pose, and hand-eye calibration.
Please watch this space for future AI Seminars :
https://engineering.oregonstate.edu/EECS/research/AI
Rajesh Mangannavar,
Graduate Student
Oregon State University
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AI Seminar Important Reminders:
-> For graduate students in the AI program, attendance is strongly encouraged