Skip to main content
Peter Wonka Research Group
P-Wonka
Peter Wonka Research Group
Main navigation
Home
People
Principal Investigators
Research Scientists and Engineers
Postdoctoral Fellows
Students
All Profiles
Alumni
Former Members
Consultants
Events
All Events
Events Calendar
News
Pages
Publications
ISL Publications Repository
Research Output
Deep generative models
Ahmad Sait
M.S. Student,
Computer Science
Computer Vision
machine learning
Deep generative models
Ahmad Sait is a Master's student in the Computer Science program at KAUST. Before joining KAUST, Ahmad obtained his Bachelor's degree in Computer Science from King Abdulaziz University, Saudi Arabia. Ahmad is also a KAUST Academy graduate from the AI track, having been under the supervision of Prof. Naeemullah Khan. The Academy provided him with seven opportunities to assist in teaching students enrolled in subsequent cohorts.
Generative Models for Neural Fields
Ivan Skorokhodov, Ph.D. Student, Computer Science
Feb 15, 20:10
-
22:00
B1 L2 R2202
Deep generative models
In computer vision, generative AI models are typically built for images, videos, and 3D objects. Recently, there has emerged a paradigm of neural fields, which unifies the representations of such types of data by parametrizing them via neural networks. In this thesis, we develop generative models for images, videos, and 3D scenes which treat the underlying data in such a form and explore the benefits which such a perspective provides.