A New Rank Constraint on Multi-view Fundamental Matrices,
and its Application to Camera Location Recovery
Abstract
Accurate estimation of camera matrices is an important
step in structure from motion algorithms. In this paper we
introduce a novel rank constraint on collections of fundamental matrices in multi-view settings. We show that in
general, with the selection of proper scale factors, a matrix
formed by stacking fundamental matrices between pairs of
images has rank 6. Moreover, this matrix forms the symmetric part of a rank 3 matrix whose factors relate directly
to the corresponding camera matrices. We use this new
characterization to produce better estimations of fundamental matrices by optimizing an L1-cost function using Iterative Re-weighted Least Squares and Alternate Direction
Method of Multiplier. We further show that this procedure
can improve the recovery of camera locations, particularly
in multi-view settings in which fewer images are available.