Publication | Closed Access
FLoSS: Facility location for subspace segmentation
76
Citations
25
References
2009
Year
Unknown Venue
Scene AnalysisSubspace SegmentationMachine LearningEngineeringRange SearchingLocalizationFacility LocationImage AnalysisData SciencePattern RecognitionComputational GeometryMachine VisionComputer ScienceStructure From MotionMedical Image ComputingComputer VisionGeometric AlgorithmNatural SciencesScene UnderstandingSubspace Segmentation ProblemMulti-view GeometryScene ModelingImage Segmentation
Subspace segmentation is the task of segmenting data lying on multiple linear subspaces. Its applications in computer vision include motion segmentation in video, structure-from-motion, and image clustering. In this work, we describe a novel approach for subspace segmentation that uses probabilistic inference via a message-passing algorithm. We cast the subspace segmentation problem as that of choosing the best subset of linear subspaces from a set of candidate subspaces constructed from the data. Under this formulation, subspace segmentation corresponds to facility location, a well studied operational research problem. Approximate solutions to this NP-hard optimization problem can be found by performing maximum-a-posteriori (MAP) inference in a probabilistic graphical model. We describe the graphical model and a message-passing inference algorithm. We demonstrate the performance of Facility Location for Subspace Segmentation, or FLoSS, on synthetic data as well as on 3D multi-body video motion segmentation from point correspondences.
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