Globally Optimal Algorithms for Stratified Autocalibration

作者:Manmohan Chandraker, Sameer Agarwal, David Kriegman, Serge Belongie

摘要

We present practical algorithms for stratified autocalibration with theoretical guarantees of global optimality. Given a projective reconstruction, we first upgrade it to affine by estimating the position of the plane at infinity. The plane at infinity is computed by globally minimizing a least squares formulation of the modulus constraints. In the second stage, this affine reconstruction is upgraded to a metric one by globally minimizing the infinite homography relation to compute the dual image of the absolute conic (DIAC). The positive semidefiniteness of the DIAC is explicitly enforced as part of the optimization process, rather than as a post-processing step.

论文关键词:Autocalibration, Multiple view geometry, Global optimization, Convex relaxations

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论文官网地址:https://doi.org/10.1007/s11263-009-0305-2