HyperSfM

3DIMPVT(2012)

引用 47|浏览13
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摘要
We propose a novel algorithm that solves the Structure from Motion problem in a divide and conquer manner by exploiting its bipartite graph structure. Recursive partitioning has a rich history, stemming from sparse linear algebra and finite element methods, and are also appealing for solving large-scale SfM problems. However, an important and less explored question is how to generate good partitionings for SfM that divide the problem into fully-constrained sub-problems. Here we introduce HyperSfM, a principled way to recursively divide an SfM problem using a hyper graph representation, in which finding edge separators yields the desired "nested-dissection" style tree of nonlinear sub-problems. After partitioning, a bottom-up computation pass solves the SfM problem robustly (by having fully constrained sub-problems) and efficiently (because most nonlinear error is removed at lower levels of the tree). The performance of the algorithm is demonstrated for various indoor and outdoor standard data-sets.
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关键词
novel algorithm,nonlinear sub-problems,bundle adjustment,recursive partitioning,divide and conquer,sfm problem,motion problem,trees (mathematics),structure from motion problem,fully-constrained sub-problems,nested-dissection style tree,nonlinear error,HyperSfM,large-scale sfm problem,bottom-up computation,sfm,edge separator,bipartite graph structure,hyper graph representation,sparse linear algebra,finite element method,finite element analysis,nonlinear subproblem,divide and conquer methods,submap,image motion analysis
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