Efficient Pruning LMI Conditions for Branch-and-Prune Rank and Chirality-Constrained Estimation of the Dual Absolute Quadric

A. Habed, D. Paudel, C. Demonceaux, D. Fofi
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引用次数: 11

Abstract

We present a new globally optimal algorithm for self-calibrating a moving camera with constant parameters. Our method aims at estimating the Dual Absolute Quadric (DAQ) under the rank-3 and, optionally, camera centers chirality constraints. We employ the Branch-and-Prune paradigm and explore the space of only 5 parameters. Pruning in our method relies on solving Linear Matrix Inequality (LMI) feasibility and Generalized Eigenvalue (GEV) problems that solely depend upon the entries of the DAQ. These LMI and GEV problems are used to rule out branches in the search tree in which a quadric not satisfying the rank and chirality conditions on camera centers is guaranteed not to exist. The chirality LMI conditions are obtained by relying on the mild assumption that the camera undergoes a rotation of no more than 90 between consecutive views. Furthermore, our method does not rely on calculating bounds on any particular cost function and hence can virtually optimize any objective while achieving global optimality in a very competitive running-time.
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对偶绝对二次函数分支-剪枝秩和手性约束估计的有效剪枝LMI条件
提出了一种恒参数运动摄像机自标定的全局最优算法。我们的方法旨在估计在秩3和可选的相机中心手性约束下的双重绝对二次(DAQ)。我们采用分支和修剪范式,探索只有5个参数的空间。我们的方法中的剪枝依赖于解决线性矩阵不等式(LMI)的可行性和仅依赖于DAQ条目的广义特征值(GEV)问题。这些LMI和GEV问题用于排除搜索树中的分支,其中保证在相机中心不存在不满足秩和手性条件的二次曲线。手性LMI条件通过依赖于相机在连续视图之间旋转不超过90度的温和假设而获得。此外,我们的方法不依赖于计算任何特定成本函数的边界,因此实际上可以优化任何目标,同时在非常有竞争力的运行时间内实现全局最优。
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