Robust Identification of Locally Planar Objects Represented by 2D Point Clouds under Affine Distortions
Pattern Recognition (Proc. DAGM), Springer, LNCS: 91--100, 2010
Abstract: The matching of point sets that are characterized only by
their geometric configuration is a challenging problem. In this paper,
we present a novel point registration algorithm for robustly identifying
objects represented by two dimensional point clouds under affine distor-
tions. We make no assumptions about the initial orientation of the point
clouds and only incorporate the geometric configuration of the points
to recover the affine transformation that aligns the parts that originate
from the same locally planar surface of the three dimensional object. Our
algorithm can deal well with noise and outliers and is inherently robust
against partial occlusions. It is in essence a GOODSAC approach based
on geometric hashing to guess a good initial affine transformation that is
iteratively refined in order to retrieve a characteristic common point set
with minimal squared error. We successfully apply it for the biometric
identification of the bluespotted ribbontail ray Taeniura lymma.
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BibTex reference
@InProceedings{MSB10, author = "D.Mai and T.Schmidt and H.Burkhardt", title = "Robust Identification of Locally Planar Objects Represented by 2D Point Clouds under Affine Distortions", booktitle = "Pattern Recognition (Proc. DAGM)", series = "LNCS", pages = "91--100", year = "2010", publisher = "Springer", url = "http://lmbweb.informatik.uni-freiburg.de/Publications/2010/MSB10" }