Correspondence-Free Material Reconstruction Using Sparse Surface Constraints

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
We present a method to infer physical material parameters and external boundaries from the scanned motion of a homogeneous deformable object via the solution of an inverse problem. Parameters are estimated from real-world data sources such as sparse observations from a Kinect sensor without correspondences. We introduce a novel Lagrangian-Eulerian optimization formulation, including a cost function that penalizes differences to observations during an optimization run. This formulation matches correspondence-free, sparse observations from a single-view depth image with a finite element simulation of deformable bodies. In a number of tests using synthetic datasets and real-world measurements, we analyse the robustness of our approach and the convergence behavior of the numerical optimization scheme.
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关键词
physical material parameters,external boundaries,scanned motion,homogeneous deformable object,inverse problem,real-world data sources,synthetic datasets,convergence behavior,parameter estimation,sparse surface constraints,correspondence-free material reconstruction,numerical optimization scheme,real-world measurements,deformable bodies,finite element simulation,single-view depth image,correspondence-free sparse observations,cost function,novel Lagrangian-Eulerian optimization formulation,Kinect sensor
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