Why is it that semidefinite relaxations have been so successful in numerous applications in computer vision and robotics for solving non-convex optimization problems involving rotations? In studying the empirical performance we note that there are few failure cases reported in the literature, in particular for estimation problems with a single rotation, motivating us to gain further theoretical understanding. A general framework based on tools from algebraic geometry is introduced for analyzing the power of semidefinite relaxations of problems with quadratic objective functions and rotational constraints. Applications include registration, hand-eye calibration and rotation averaging. We characterize the extreme points, and show that there exist failure cases for which the relaxation is not tight, even in the case of a single rotation. We also show that some problem classes are always tight given an appropriate parametrization. Our theoretical findings are accompanied with numerical simulations, providing further evidence and understanding of the results.
翻译:为什么半无限制的放松在计算机视觉和机器人的众多应用中如此成功地解决了与轮换有关的非convex优化问题?在研究经验性表现时,我们注意到文献中报告的失败案例很少,特别是在单轮运行的估计问题方面,促使我们进一步获得理论理解。基于代数几何工具的一般框架被引入来分析半无限制放松具有四级目标功能和旋转限制问题的力量。应用包括注册、手眼校准和平均轮换。我们描述极端点,并表明存在松散不力的失败案例,即使在单轮运行的情况下也是如此。我们还表明,有些问题类别总是很紧,因为有适当的配方。我们的理论结论伴随着数字模拟,提供了进一步的证据和对结果的理解。