Spectral coarsening of geometric operators
Author(s) -
HsuehTi Derek Liu,
Alec Jacobson,
Maks Ovsjanikov
Publication year - 2019
Publication title -
acm transactions on graphics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.153
H-Index - 218
eISSN - 1557-7368
pISSN - 0730-0301
DOI - 10.1145/3306346.3322953
Subject(s) - measure (data warehouse) , eigenvalues and eigenvectors , operator (biology) , multigrid method , computer science , isotropy , mathematics , pooling , algebraic number , laplace operator , algorithm , artificial intelligence , mathematical analysis , biochemistry , chemistry , physics , repressor , quantum mechanics , database , transcription factor , partial differential equation , gene
We introduce a novel approach to measure the behavior of a geometric operator before and after coarsening. By comparing eigenvectors of the input operator and its coarsened counterpart, we can quantitatively and visually analyze how well the spectral properties of the operator are maintained. Using this measure, we show that standard mesh simplification and algebraic coarsening techniques fail to maintain spectral properties. In response, we introduce a novel approach for spectral coarsening. We show that it is possible to significantly reduce the sampling density of an operator derived from a 3D shape without affecting the low-frequency eigenvectors. By marrying techniques developed within the algebraic multigrid and the functional maps literatures, we successfully coarsen a variety of isotropic and anisotropic operators while maintaining sparsity and positive semi-definiteness. We demonstrate the utility of this approach for applications including operatorsensitive sampling, shape matching, and graph pooling for convolutional neural networks.
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