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Large-Scale Bundle Adjustment by Parameter Vector Partition

机译:参数矢量分区的大规模捆绑调整

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We propose an efficient parallel bundle adjustment (BA) algorithm to refine 3D reconstruction of the large-scale structure from motion (SfM) problem, which uses image collections from Internet. Different from the latest BA techniques that improve efficiency by optimizing the reprojection error function with Conjugate Gradient (CG) methods, we employ the parameter vector partition strategy. More specifically, we partition the whole BA parameter vector into a set of individual sub-vectors via normalized cut (Ncut). Correspondingly, the solution of the BA problem can be obtained by minimizing subproblems on these sub-vector spaces. Our approach is approximately parallel, and there is no need to solve the large-scale linear equation of the BA problem. Experiments carried out on a low-end computer with 4GB RAM demonstrate the efficiency and accuracy of the proposed algorithm.
机译:我们提出了一个有效的并行束调整(BA)算法,可以从运动(SFM)问题中改进大规模结构的3D重建,这使用来自Internet的图像集合。不同于最新的BA技术,通过优化具有共轭梯度(CG)方法的输注误差函数来提高效率,我们采用参数矢量分区策略。更具体地,我们通过归一化切割(NCUT)将整个BA参数向量分配成一组各个子向量。相应地,可以通过最小化这些子向量空间上的子问题来获得BA问题的解决方案。我们的方法大致平行,无需解决BA问题的大规模线性方程。在具有4GB RAM的低端计算机上进行的实验证明了所提出的算法的效率和准确性。

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