TY - GEN
T1 - Surface reconstruction of noisy and defective data sets
AU - Xie, Hui
AU - McDonnell, Kevin T.
AU - Qin, Hong
PY - 2004
Y1 - 2004
N2 - We present a novel surface reconstruction algorithm that can recover high-quality surfaces from noisy and defective data sets without any normal or orientation information. A set of new techniques are introduced to afford extra noise tolerability, robust orientation alignment, reliable outlier removal, and satisfactory feature recovery. In our algorithm, sample points are first organized by an octree. The points are then clustered into a set of monolithically singly-oriented groups. The inside/outside orientation of each group is determined through a robust voting algorithm. We locally fit an implicit quadric surface in each octree cell. The locally fitted implicit surfaces are then blended to produce a signed distance field using the modified Shepard's method. We develop sophisticated iterative fitting algorithms to afford improved noise tolerance both in topology recognition and geometry accuracy. Furthermore, this iterative fitting algorithm, coupled with a local model selection scheme, provides a reliable sharp feature recovery mechanism even in the presence of bad input.
AB - We present a novel surface reconstruction algorithm that can recover high-quality surfaces from noisy and defective data sets without any normal or orientation information. A set of new techniques are introduced to afford extra noise tolerability, robust orientation alignment, reliable outlier removal, and satisfactory feature recovery. In our algorithm, sample points are first organized by an octree. The points are then clustered into a set of monolithically singly-oriented groups. The inside/outside orientation of each group is determined through a robust voting algorithm. We locally fit an implicit quadric surface in each octree cell. The locally fitted implicit surfaces are then blended to produce a signed distance field using the modified Shepard's method. We develop sophisticated iterative fitting algorithms to afford improved noise tolerance both in topology recognition and geometry accuracy. Furthermore, this iterative fitting algorithm, coupled with a local model selection scheme, provides a reliable sharp feature recovery mechanism even in the presence of bad input.
KW - Computer Graphics
KW - Modified Shepard's Method
KW - MPU implicits
KW - Surface Reconstruction
KW - Surface Representation
UR - https://www.scopus.com/pages/publications/17044388912
M3 - Conference contribution
AN - SCOPUS:17044388912
SN - 0780387880
SN - 9780780387881
T3 - IEEE Visualization 2004 - Proceedings, VIS 2004
SP - 259
EP - 266
BT - IEEE Visualization 2004 - Proceedings, VIS 2004
A2 - Rushmeier, H.
A2 - Turk, G.
A2 - Wijk, J.J.
T2 - IEEE Visualization 2004 - Proceedings, VIS 2004
Y2 - 10 October 2004 through 15 October 2004
ER -