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dc.contributor.authorBae, Egil
dc.contributor.authorMerkurjev, Ekaterina
dc.date.accessioned2017-06-07T11:01:07Z
dc.date.accessioned2017-06-08T11:11:38Z
dc.date.available2017-06-07T11:01:07Z
dc.date.available2017-06-08T11:11:38Z
dc.date.issued2017
dc.identifier.citationBae E, Merkurjev E. Convex Variational Methods on Graphs for Multiclass Segmentation of High-Dimensional Data and Point Clouds. Journal of Mathematical Imaging and Vision. 2017;58(3):468-493en_GB
dc.identifier.urihttp://hdl.handle.net/20.500.12242/628
dc.identifier.urihttps://ffi-publikasjoner.archive.knowledgearc.net/handle/20.500.12242/628
dc.descriptionBae, Egil; Merkurjev, Ekaterina. Convex Variational Methods on Graphs for Multiclass Segmentation of High-Dimensional Data and Point Clouds. Journal of Mathematical Imaging and Vision 2017 ;Volum 58.(3) s. 468-493en_GB
dc.description.abstractGraph-based variational methods have recently shown to be highly competitive for various classification problems of high-dimensional data, but are inherently difficult to handle from an optimization perspective. This paper proposes a convex relaxation for a certain set of graph-based multiclass data segmentation models involving a graph total variation term, region homogeneity terms, supervised information and certain constraints or penalty terms acting on the class sizes. Particular applications include semi-supervised classification of high-dimensional data and unsupervised segmentation of unstructured 3D point clouds. Theoretical analysis shows that the convex relaxation closely approximates the original NP-hard problems, and these observations are also confirmed experimentally. An efficient duality-based algorithm is developed that handles all constraints on the labeling function implicitly. Experiments on semi-supervised classification indicate consistently higher accuracies than related non-convex approaches and considerably so when the training data are not uniformly distributed among the data set. The accuracies are also highly competitive against a wide range of other established methods on three benchmark data sets. Experiments on 3D point clouds acquired by a LaDAR in outdoor scenes demonstrate that the scenes can accurately be segmented into object classes such as vegetation, the ground plane and human-made structures.en_GB
dc.language.isoenen_GB
dc.subjectTermSet Emneord::Variasjonsregning
dc.subjectTermSet Emneord::Grafiske modeller
dc.subjectTermSet Emneord::Optimalisering
dc.subjectTermSet Emneord::Maskinlæring
dc.titleConvex Variational Methods on Graphs for Multiclass Segmentation of High-Dimensional Data and Point Cloudsen_GB
dc.typeArticleen_GB
dc.date.updated2017-06-07T11:01:07Z
dc.identifier.cristinID1472461
dc.identifier.cristinID1472461
dc.identifier.doi10.1007/s10851-017-0713-9
dc.source.issn0924-9907
dc.source.issn1573-7683
dc.type.documentJournal article
dc.relation.journalJournal of Mathematical Imaging and Vision


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