Learning to Model the Functionality and Physics of 3D Shapes
Presenter: Shilin Zhu CSE Department, UCSD
Learning to Model the Functionality and Physics of 3D Shapes - - PowerPoint PPT Presentation
Learning to Model the Functionality and Physics of 3D Shapes Presenter: Shilin Zhu CSE Department, UCSD Logic Flow How to obtain the interaction context? How to apply the forces? How to infer physical properties? How to obtain the
Presenter: Shilin Zhu CSE Department, UCSD
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physical parameters (i.e., density)
Confusion Matrix
physics is non-trivial
perception on dynamics
definition makes the problem hard to model