Efficient Computation of Integer-constrained Cones for Conformal Parameterizations
By: Wei Du , Qing Fang , Ligang Liu and more
We propose an efficient method to compute a small set of integer-constrained cone singularities, which induce a rotationally seamless conformal parameterization with low distortion. Since the problem only involves discrete variables, i.e., vertex-constrained positions, integer-constrained angles, and the number of cones, we alternately optimize these three types of variables to achieve tractable convergence. Central to high efficiency is an explicit construction algorithm that reduces the optimization problem scale to be slightly greater than the number of integer variables for determining the optimal angles with fixed positions and numbers, even for high-genus surfaces. In addition, we derive a new derivative formula that allows us to move the cones, effectively reducing distortion until convergence. Combined with other strategies, including repositioning and adding cones to decrease distortion, adaptively selecting a constrained number of integer variables for efficient optimization, and pairing cones to reduce the number, we quickly achieve a favorable tradeoff between the number of cones and the parameterization distortion. We demonstrate the effectiveness and practicability of our cones by using them to generate rotationally seamless and low-distortion parameterizations on a massive test data set. Our method demonstrates an order-of-magnitude speedup (30$\times$ faster on average) compared to state-of-the-art approaches while maintaining comparable cone numbers and parameterization distortion.
Similar Papers
Toroidal area-preserving parameterizations of genus-one closed surfaces
Numerical Analysis
Makes 3D shapes easier to map and measure.
Square-Domain Area-Preserving Parameterization for Genus-Zero and Genus-One Closed Surfaces
Numerical Analysis
Makes 3D shapes flat without tearing.
Variational analysis of determinantal varieties
Optimization and Control
Makes computers better at finding simple patterns.