Title
A Robust and Fast Reconstruction Framework for Noisy and Large Point Cloud Data
Abstract
In this paper we present a robust reconstruction framework on noisy and large point cloud data. Though Poisson reconstruction performs well in recovering the surface from noisy point cloud data, it's problematic to reconstruct underlying surface from large cloud data, especially on a general processor. An inaccurate estimation of point normal for noisy and large dataset would result in local distortion on the reconstructed mesh. We adopt a systematical combination of Poisson-disk sampling, normal estimation and Poisson reconstruction to avoid the inaccuracy of normal calculated from k-nearest neighbors. With the fewer dataset obtained by sampling on original points, the normal estimated is more reliable for subsequent Poisson reconstruction and the time spent in normal estimation and reconstruction is much less. We demonstrate the effectiveness of the framework in recovering topology and geometry information when dealing with point cloud data from real world. The experiment results indicate that the framework is superior to Poisson reconstruction directly on raw point dataset in the aspects of time consumption and visual fidelity.
Year
DOI
Venue
2014
10.1109/CCGrid.2014.59
CCGrid
Keywords
Field
DocType
reconstruction framework,k-nearest neighbors,geometry information,mesh generation,computational geometry,poisson-disk sampling,time consumption,point cloud data,reconstructed mesh,topology information,topology,solid modelling,sampling methods,raw point dataset,normal estimation,visual fidelity,local distortion,poisson reconstruction,robustness,surface reconstruction,vectors,noise,k nearest neighbors,estimation,noise measurement
Surface reconstruction,Pattern recognition,Noise measurement,Computer science,Robustness (computer science),Sampling (statistics),Artificial intelligence,Poisson distribution,Point cloud,Distortion,Cloud computing
Conference
ISSN
Citations 
PageRank 
2376-4414
0
0.34
References 
Authors
13
5
Name
Order
Citations
PageRank
Xiang Feng101.69
Xiaoqing Yu27511.53
Wanggen Wan312934.04
Fabien Pfaender400.34
J. Alfredo Sánchez520044.82