Title :
Robust filtering of noisy scattered point data
Author :
Schall, Oliver ; Belyaev, Alexander ; Seidel, Hans-Peter
Author_Institution :
Max-Planck-Inst. fur Inf., Saarbrucken, Germany
Abstract :
In this paper, we develop a method for robust filtering of a noisy set of points sampled from a smooth surface. The main idea of the method consists of using a kernel density estimation technique for point clustering. Specifically, we use a mean-shift based clustering procedure. With every point of the input data we associate a local likelihood measure capturing the probability that a 3D point is located on the sampled surface. The likelihood measure takes into account the normal directions estimated at the scattered points. Our filtering procedure suppresses noise of different amplitudes and allows for an easy detection of outliers, which are then automatically removed by simple thresholding. The remaining set of maximum likelihood points delivers an accurate point-based approximation of the surface. We also show that while some established meshing techniques often fail to reconstruct the surface from original noisy point scattered data, they work well in conjunction with our filtering method.
Keywords :
computational geometry; edge detection; image denoising; image sampling; interference suppression; solid modelling; computational geometry; kernel density estimation; local likelihood measure; maximum likelihood point; mean-shift based clustering; meshing technique; noise suppression; noisy scattered point data; object modeling; outlier detection; point clustering; point-based approximation; probability; robust filtering; simple thresholding; Computer graphics; Filtering; Kernel; Light scattering; Low pass filters; Noise figure; Optical filters; Optical noise; Optical scattering; Robustness;
Conference_Titel :
Point-Based Graphics, 2005. Eurographics/IEEE VGTC Symposium Proceedings
Print_ISBN :
3-905673-20-7
DOI :
10.1109/PBG.2005.194067