Q-MAT: Computing Medial Axis Transform By Quadratic Error Minimization
Pan Li, Bin Wang, Feng Sun, Xiaohu Guo, Caiming Zhang, Wenping Wang
In ACM Transactions on Graphics (TOG), 35(1), December 2015.
Abstract: The medial axis transform (MAT) is an important shape representation for shape approximation, shape recognition, and shape retrieval. Despite years of research, there is still a lack of effective methods for efficient, robust and accurate computation of the MAT. We present an efficient method, called Q-MAT, that uses quadratic error minimization to compute a structurally simple, geometrically accurate, and compact representation of the MAT. We introduce a new error metric for approximation and a new quantitative characterization of unstable branches of the MAT, and integrate them in an extension of the well-known quadric error metric (QEM) framework for mesh decimation. Q-MAT is fast, removes insignificant unstable branches effectively, and produces a simple and accurate piecewise linear approximation of the MAT. The method is thoroughly validated and compared with existing methods for MAT computation.
@article{10.1145-2753755,
author = {Pan Li and Bin Wang and Feng Sun and Xiaohu Guo and Caiming Zhang and Wenping Wang},
title = {Q-MAT: Computing Medial Axis Transform By Quadratic Error Minimization},
journal = {ACM Transactions on Graphics (TOG)},
volume = {35},
number = {1},
articleno = {8},
month = dec,
year = {2015},
}
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