从运动中划分结构的光谱

Drew Steedly, Irfan Essa, F. Dellaert
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引用次数: 54

摘要

我们提出了一种用于大规模优化问题的谱划分方法,特别是运动结构优化问题。在从运动到结构的问题中,划分方法将问题分解为更小、条件更好的子问题,可以有效地进行优化。我们的划分方法只使用重投影误差及其特征向量的Hessian。我们证明了保留小特征值对应的特征向量的分割系统在优化时可以得到较小的残差。我们通过聚类Hessian特征向量对应于小特征值的条目来创建分区。这是一种比依赖领域知识和启发式(如运动方法的自下而上结构)更通用的技术。同时,它比一般的矩阵划分算法利用了更多的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral partitioning for structure from motion
We propose a spectral partitioning approach for large-scale optimization problems, specifically structure from motion. In structure from motion, partitioning methods reduce the problem into smaller and better conditioned subproblems which can be efficiently optimized. Our partitioning method uses only the Hessian of the reprojection error and its eigenvector. We show that partitioned systems that preserve the eigenvectors corresponding to small eigenvalues result in lower residual error when optimized. We create partitions by clustering the entries of the eigenvectors of the Hessian corresponding to small eigenvalues. This is a more general technique than relying on domain knowledge and heuristics such as bottom-up structure from motion approaches. Simultaneously, it takes advantage of more information than generic matrix partitioning algorithms.
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