We present a robust approach for reconstructing
the architectural structure of complex indoor environments
given a set of cluttered input scans. Our method first uses an
efficient occlusion-aware process to extract planar patches as
candidate walls, separating them from clutter and coping with
missing data. Using a diffusion process to further increase its
robustness, our algorithm is able to reconstruct a clean architectural
model from the candidate walls. To our knowledge, this
is the first indoor reconstruction method which goes beyond
a binary classification and automatically recognizes different
rooms as separate components. We demonstrate the validity
of our approach by testing it on both synthetic models and
real-world 3D scans of indoor environments.
Titolo della pubblicazione:Proceedings IEEE Conference on Computer-Aided Design and Computer Graphics