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dc.contributor.authorAssi, Kondo C.
dc.contributor.authorLabelle, Hubert
dc.contributor.authorCheriet, Farida
dc.date.accessioned2016-02-16T16:22:12Z
dc.date.availableNO_RESTRICTIONfr
dc.date.available2016-02-16T16:22:12Z
dc.date.issued2014-03
dc.identifier.urihttp://hdl.handle.net/1866/13078
dc.description.sponsorshipIRSC / CIHRfr
dc.publisherIEEEfr
dc.subject3-D shape prediction Mahalanobis distance metric learning nearest neighbor regression semidefinite programmingfr
dc.titleModified Large Margin Nearest Neighbor Metric Learning for Regressionfr
dc.typeArticlefr
dc.contributor.affiliationUniversité de Montréal. Faculté de médecine. Département de chirurgiefr
dc.identifier.doi10.1109/LSP.2014.2301037
dcterms.abstractThe main objective of this letter is to formulate a new approach of learning a Mahalanobis distance metric for nearest neighbor regression from a training sample set. We propose a modified version of the large margin nearest neighbor metric learning method to deal with regression problems. As an application, the prediction of post-operative trunk 3-D shapes in scoliosis surgery using nearest neighbor regression is described. Accuracy of the proposed method is quantitatively evaluated through experiments on real medical data.fr
dcterms.languageengfr
UdeM.VersionRioxxVersion acceptée / Accepted Manuscript
oaire.citationTitleIEEE signal processing letters
oaire.citationVolume21
oaire.citationIssue3
oaire.citationStartPage292
oaire.citationEndPage296


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