24
5

Exact simultaneous recovery of locations and structure from known orientations and corrupted point correspondences

Abstract

Let t1,,tnlRdt_1,\ldots,t_{n_l} \in \mathbb{R}^d and p1,,pnsRdp_1,\ldots,p_{n_s} \in \mathbb{R}^d and consider the bipartite location recovery problem: given a subset of pairwise direction observations {(tipj)/tipj2}i,j[nl]×[ns]\{(t_i - p_j) / \|t_i - p_j\|_2\}_{i,j \in [n_l] \times [n_s]}, where a constant fraction of these observations are arbitrarily corrupted, find {ti}i[nll]\{t_i\}_{i \in [n_ll]} and {pj}j[ns]\{p_j\}_{j \in [n_s]} up to a global translation and scale. We study the recently introduced ShapeFit algorithm as a method for solving this bipartite location recovery problem. In this case, ShapeFit consists of a simple convex program over d(nl+ns)d(n_l + n_s) real variables. We prove that this program recovers a set of nl+nsn_l+n_s i.i.d. Gaussian locations exactly and with high probability if the observations are given by a bipartite Erd\H{o}s-R\'{e}nyi graph, dd is large enough, and provided that at most a constant fraction of observations involving any particular location are adversarially corrupted. This recovery theorem is based on a set of deterministic conditions that we prove are sufficient for exact recovery. Finally, we propose a modified pipeline for the Structure for Motion problem, based on this bipartite location recovery problem.

View on arXiv
Comments on this paper