posted on 2003-01-01, 00:00authored byRanjith Unnikrishnan, Martial Hebert
The extraction of multiple coherent structures
from point clouds is crucial to the problem of scene modeling.
While many statistical methods exist for robust estimation
from noisy data, they are inadequate for addressing issues
of scale, semi-structured clutter, and large point density
variation together with the computational restrictions of
autonomous navigation. This paper extends an approach of
nonparametric projection-pursuit based regression to compensate
for the non-uniform and directional nature of data
sampled in outdoor environments. The proposed algorithm
is employed for extraction of planar structures and clutter
grouping. Results are shown for scene abstraction of 3D
range data in large urban scenes.