Procedings of the British Machine Vision Conference 2015 2015
DOI: 10.5244/c.29.20
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Robust Multiple Model Fitting with Preference Analysis and Low-rank Approximation

Abstract: Geometric multi-model fitting aims at extracting parametric models from unstructured data in order to organize and aggregate visual content in suitable higher-level geometric structures. This ubiquitous task can be encountered in many Computer Vision applications, for example in 3D reconstruction, in the processing of 3D point clouds, in face clustering, in body-pose estimation or video motion segmentation, just to name a few.In practice, it is necessary to overcome the "chicken-&-egg dilemma" inherent to this… Show more

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Cited by 48 publications
(103 citation statements)
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“…Table 2 shows the mean and median misclassification errors on all 19 image pairs of the AdelaideRMF dataset. The competitor methods are T-Linkage [11], J-Linkage [24], RPA [10], SA-RCM [20], Greedy-RansaCov [12] and ILP-RansaCov [12]. Multi-H significantly outperforms all published methods.…”
Section: Comparison With Multi-homography Fitting Techniquesmentioning
confidence: 99%
“…Table 2 shows the mean and median misclassification errors on all 19 image pairs of the AdelaideRMF dataset. The competitor methods are T-Linkage [11], J-Linkage [24], RPA [10], SA-RCM [20], Greedy-RansaCov [12] and ILP-RansaCov [12]. Multi-H significantly outperforms all published methods.…”
Section: Comparison With Multi-homography Fitting Techniquesmentioning
confidence: 99%
“…A consensus matrix P has to be instantiated via random sampling, but we are agnostic here on the specific sampling strategy (e.g. [27,28,17]). At first we concentrate on the case in which all the points are inliers (the case of outliers will be dealt with later on).…”
Section: Set Cover Formulationmentioning
confidence: 99%
“…In all these scenarios we compare ILP-RansaCov with JLinkage [8], T-linkage [15] and RPA [17], whose implementation is taken from [40]. In addition, one reference method have been added to the comparison for each specific scenario, namely: MFIGP [38] in the vanishing point experiments, SSC [41] for video motion segmentation and RCMSA [18] for two-views segmentation.…”
Section: Experimental Comparison On Real Datamentioning
confidence: 99%
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