Title of article :
Geometry and Convergence Analysis of Algorithms for Registration
of 3D Shapes
Author/Authors :
HELMUT POTTMANN، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
The computation of a rigid body transformation which optimally aligns a set of measurement points
with a surface and related registration problems are studied from the viewpoint of geometry and optimization. We
provide a convergence analysis for widely used registration algorithms such as ICP, using either closest points
(Besl and McKay, 1992) or tangent planes at closest points (Chen and Medioni, 1991) and for a recently developed
approach based on quadratic approximants of the squared distance function (Pottmann et al., 2004). ICP based
on closest points exhibits local linear convergence only. Its counterpart which minimizes squared distances to the
tangent planes at closest points is a Gauss-Newton iteration; it achieves local quadratic convergence for a zero
residual problem and—if enhanced by regularization and step size control—comes close to quadratic convergence
in many realistic scenarios. Quadratically convergent algorithms are based on the approach in (Pottmann et al.,
2004). The theoretical results are supported by a number of experiments; there, we also compare the algorithms
with respect to global convergence behavior, stability and running time.
Keywords :
registration , optimization , Distance function , ICP algorithm , rigid registration , Kinematics , Convergenceanalysis
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION