Multi-level Optimization Approaches to Computer Vision
- Dominic Jack | QUT
On a broad level, computer graphics involves representing 3D information in 2D. Computer vision can be thought of as the inverse problem – inferring 3D information from a projected representation. This talk will discuss two deep learning approaches to 3D human pose estimation and single-view object reconstruction that attempt to learn about solution feasibility while incorporating simple computer graphics techniques to ensure consistency with observations. The first approach optimizes a GAN to produce a parameterization of the feasible solution space, then seeks a solution in that space which is maximally consistent with observations. The follow-up approach is based on combining these optimization steps into a single nested optimization problem.
-
-
Andrew Fitzgibbon
Partner Researcher
-
-
Watch Next
-
-
-
Panel: Is Retrieval Relevant in the Age of Reasoning?
- Himanshu Tyagi,
- Ravishankar Krishnaswamy,
- Mrinal Kanti Das
-
Session on Reasoning
- Hongxiang Fan,
- Nagarajan Natarajan
-
Human-Centered AI: Design, Deployment & Healthcare
- Manik Gupta,
- Anirudha Joshi,
- Aaditeshwar Seth
-
-
Session on Retrieval
- Lokesh Nagalapatti,
- Soumen Chakrabarti
-
Session on Inclusive AI: Data, Models, Evaluation
- Niloy Ganguly,
- Danish Pruthi,
- Sunayana Sitaram
-
-