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Analytic Methods for Geometric Modeling via Spherical Decomposition

Authors :
Behandish, Morad
Ilies, Horea T.
Source :
Journal of Computer-Aided Design, 70, pp.100-115, 2016
Publication Year :
2017

Abstract

Analytic methods are emerging in solid and configuration modeling, while providing new insights into a variety of shape and motion related problems by exploiting tools from group morphology, convolution algebras, and harmonic analysis. However, most convolution-based methods have used uniform grid-based sampling to take advantage of the fast Fourier transform (FFT) algorithm. We propose a new paradigm for more efficient computation of analytic correlations that relies on a grid-free discretization of arbitrary shapes as countable unions of balls, in turn described as sublevel sets of summations of smooth radial kernels at adaptively sampled 'knots'. Using a simple geometric lifting trick, we interpret this combination as a convolution of an impulsive skeletal density and primitive kernels with conical support, which faithfully embeds into the convolution formulation of interactions across different objects. Our approach enables fusion of search-efficient combinatorial data structures prevalent in time-critical collision and proximity queries with analytic methods popular in path planning and protein docking, and outperforms uniform grid-based FFT methods by leveraging nonequispaced FFTs. We provide example applications in formulating holonomic collision constraints, shape complementarity metrics, and morphological operations, unified within a single analytic framework.<br />Comment: Special Issue on SIAM/ACM symposium on Solid and Physical Modeling (SPM'2015) (Best Paper Award, 2nd Place)

Details

Database :
arXiv
Journal :
Journal of Computer-Aided Design, 70, pp.100-115, 2016
Publication Type :
Report
Accession number :
edsarx.1711.05075
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.cad.2015.06.016