2014
DOI: 10.1007/s11263-014-0760-2
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Tractable Algorithms for Robust Model Estimation

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Cited by 30 publications
(27 citation statements)
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“…However, most of these deterministic fitting methods assume that there only exists a single structure in data, and they cannot provide solutions for multiplestructure data within a reasonable time (most of them does not be applied sequentially for multiple-structure data since they cannot handle high outlier percentages). Note that IMaxFS-ISE [16] and MS [7] can work for multiple-structure data, but they require to generate a number of model hypotheses repeatedly, which is computationally expensive. Compared to these deterministic sampling based fitting methods, the proposed SDF fitting method not only reserves the deterministic nature but also efficiently provides good solutions for fitting both single-structure and multiple-structure data.…”
Section: Deterministic Sampling Based Fitting Methodsmentioning
confidence: 99%
“…However, most of these deterministic fitting methods assume that there only exists a single structure in data, and they cannot provide solutions for multiplestructure data within a reasonable time (most of them does not be applied sequentially for multiple-structure data since they cannot handle high outlier percentages). Note that IMaxFS-ISE [16] and MS [7] can work for multiple-structure data, but they require to generate a number of model hypotheses repeatedly, which is computationally expensive. Compared to these deterministic sampling based fitting methods, the proposed SDF fitting method not only reserves the deterministic nature but also efficiently provides good solutions for fitting both single-structure and multiple-structure data.…”
Section: Deterministic Sampling Based Fitting Methodsmentioning
confidence: 99%
“…However, outliers are almost always present in the correspondence set. When this is the case, the inlier set can be retrieved using RANSAC [20] or robust global optimization [19,2,18,55]. Some of these approaches [20,19] can be applied when correspondences are not available by providing all possible permutations of the correspondence set.…”
Section: Related Workmentioning
confidence: 99%
“…Although such formulations lead to challenging optimization problems, using recent advances in robust estimation it is sometimes possible to develop tractable methods. In [5], it was shown how the number of inliers can be maximized in polynomial time, for a fixed-dimensional model, where the computational complexity follows directly as a consequence of the theory of optimization. One requirement is that the parameter space is a differentiable manifold embedded in R m with a set of equality constraints.…”
Section: Maximizing the Number Of Inliersmentioning
confidence: 99%
“…We will here describe how these ideas can be applied to orthographic essential matrix estimation, resulting in an optimal method. The main theorem from [5] shows that one can find the optimal solution with respect to the number of inliers by enumerating a finite set of so called critical points, essentially being the Karush-Kuhn-Tucker (KKT) points. These critical points divide the solution space into regions that contain different combinations of inliers and outliers, and the optimal solution with respect to the number of inliers will be found in one of the critical points.…”
Section: Maximizing the Number Of Inliersmentioning
confidence: 99%
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