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A Certifiably Globally Optimal Solution to the Non-minimal Relative Pose Problem

机译:一个可证明的全球最佳解决方案,对非最小相对姿势问题

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Finding the relative pose between two calibrated views ranks among the most fundamental geometric vision problems. It therefore appears as somewhat a surprise that a globally optimal solver that minimizes a properly defined energy over non-minimal correspondence sets and in the original space of relative transformations has yet to be discovered. This, notably, is the contribution of the present paper. We formulate the problem as a Quadratically Constrained Quadratic Program (QCQP), which can be converted into a Semidefinite Program (SDP) using Shor's convex relaxation. While a theoretical proof for the tightness of this relaxation remains open, we prove through exhaustive validation on both simulated and real experiments that our approach always finds and certifies (a-posteriori) the global optimum of the cost function.
机译:在最基本的几何视觉问题中找到两个校准视图之间的相对姿势。因此,它看起来有点令人惊讶的是,全局最佳求解器,其最小化非最小对应集和相对变换的原始空间中的适当定义的能量,并且尚未被发现。值得注意的是,这是本文的贡献。我们将问题作为二次约束的二次程序(QCQP),可以使用Shor的凸松弛转换为SemideFinite程序(SDP)。虽然这种放松的紧绷性的理论证据仍然是开放的,但我们通过对模拟和实验的详尽验证来证明我们的方法始终发现和认证(A-Bonderiori)的成本函数的全球最佳。

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