Inferring 3D Shapes and Deformations from Single Views
نویسندگان
چکیده
MA or MS models the variation along one of two axes of the shape space. V A and V represent the shapes with only the pose variation/phenotype variation imposed respectively. To fully span the shape space, Jacobian matrices are used to transfer the phenotype variation to a new pose. They are determined by the corresponding local triangle pairs on the zero shape V and posed shape V. Task 2: 3D Reconstruction from Single Images Task 1: Shape Synthesis
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