Planar Structures from Line Correspondences in a Manhattan World

Chelhwon Kim and Roberto Manduchi

Abstract

Traditional structure from motion is hard in indoor environments with only a few detectable point features. These environments, however, have other useful characteristics: they often contain severable visible lines, and their layout typically conforms to a Manhattan world geometry. We introduce a new algorithm to cluster visible lines in a Manhattan world, seen from two different viewpoints, into coplanar bundles. This algorithm is based on the notion of “characteristic line”, which is an invariant of a set of parallel coplanar lines. Finding coplanar sets of lines becomes a problem of clustering characteristic lines, which can be accomplished using a modified mean shift procedure. The algorithm is computationally light and produces good results in real world situations.

See more details and examples in the following paper.

· C. Kim and R. Manduchi, “ Planar Structures from Line Correspondences in a Manhattan World”, in 12th Asian Conference on Computer Vision (ACCV 2014), 2014.
· Supplementary
· Poster

ACCV14 poster