Sciweavers

IROS
2008
IEEE

Aligning point cloud views using persistent feature histograms

14 years 7 months ago
Aligning point cloud views using persistent feature histograms
— In this paper we investigate the usage of persistent point feature histograms for the problem of aligning point cloud data views into a consistent global model. Given a collection of noisy point clouds, our algorithm estimates a set of robust 16D features which describe the geometry of each point locally. By analyzing the persistence of the features at different scales, we extract an optimal set which best characterizes a given point cloud. The resulted persistent features are used in an initial alignment algorithm to estimate a rigid transformation that approximately registers the input datasets. The algorithm provides good starting points for iterative registration algorithms such as ICP (Iterative Closest Point), by transforming the datasets to its convergence basin. We show that our approach is invariant to pose and sampling density, and can cope well with noisy data coming from both indoor and outdoor laser scans.
Radu Bogdan Rusu, Nico Blodow, Zoltan Csaba Marton
Added 31 May 2010
Updated 31 May 2010
Type Conference
Year 2008
Where IROS
Authors Radu Bogdan Rusu, Nico Blodow, Zoltan Csaba Marton, Michael Beetz
Comments (0)