2022
DOI: 10.48550/arxiv.2205.02904
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Neural Jacobian Fields: Learning Intrinsic Mappings of Arbitrary Meshes

Abstract: At the same time, by operating in the intrinsic gradient domain of each individual mesh, it allows the framework to predict highly-accurate mappings. We validate these properties by conducting experiments over a broad range of scenarios, from semantic ones such as morphing, registration, and deformation transfer, to optimization-based ones, such as emulating elastic deformations and contact correction, as well as being the first work, to our knowledge, to tackle the task of learning to compute UV parameterizat… Show more

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