Stable Camera Motion Estimation Using Convex Programming
Onur Ozyesil, Amit Singer, Ronen Basri

TL;DR
This paper introduces a convex programming approach to robustly estimate camera locations in structure from motion, overcoming clustering issues in noisy measurements and providing theoretical guarantees and practical algorithms.
Contribution
It develops a semidefinite programming formulation for stable camera location estimation, with theoretical analysis and a scalable distributed solution.
Findings
The SDP method achieves stable location recovery in noisy conditions.
The approach outperforms existing methods in experiments on real images.
Theoretical results guarantee exact recovery in noiseless scenarios.
Abstract
We study the inverse problem of estimating n locations (up to global scale, translation and negation) in from noisy measurements of a subset of the (unsigned) pairwise lines that connect them, that is, from noisy measurements of for some pairs (i,j) (where the signs are unknown). This problem is at the core of the structure from motion (SfM) problem in computer vision, where the 's represent camera locations in . The noiseless version of the problem, with exact line measurements, has been considered previously under the general title of parallel rigidity theory, mainly in order to characterize the conditions for unique realization of locations. For noisy pairwise line measurements, current methods tend to produce spurious solutions that are clustered around a few locations. This sensitivity of the location estimates is a…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Robotics and Sensor-Based Localization · Advanced Vision and Imaging
