BSIF Features Learning using TXQEDA Tensor Subspace for kinship verification

dc.contributor.authorAliradi, Rachid
dc.contributor.authorOuamane , Abdealmalik
dc.date.accessioned2024-02-04T14:20:47Z
dc.date.available2024-02-04T14:20:47Z
dc.date.issued2023-06
dc.description.abstractFacial kinship verification is a hard research domain in vision that has very interesting regard in the latest decennial. Various applications were really realized in social media, biometrics, and development in studies of demographic. But the result accuracies obtained that is so weak to predict kinship relationships by facial appearance. To take up this challenge and tackle this problem. We use a new approach called Color BSIF learning an approach that has appeared as an encouraging solution. The aim is to solve problem KV by using the color BSIF learning features with the TXQEDA method for dimensionality reduction and data classification in order to train the model, Let's test the kinship facial verification application namely the Cornell Kinface database. This framework ameliorates the time cost and efficiency. The experimental results obtained surpass other states of the art methods
dc.identifier.urihttps://dl.cerist.dz/handle/CERIST/1011
dc.publisherEchahid Cheikh Larbi Tebessi university
dc.relation.ispartofseriesInternational Conference on Advances in Electrical and Computer Engineering 2023 (ICAECE'2023 TEBESSA Algeria)
dc.relation.pages5 p.
dc.relation.placeTebessa- Algeria
dc.structureSystèmes d'Information et Image en Santé S2IS
dc.subjectVerification Kinship
dc.subjectColor BSIF learning
dc.subjectTXQEDA
dc.subjectCornell Kinship database
dc.subjectFacial kinship verification
dc.titleBSIF Features Learning using TXQEDA Tensor Subspace for kinship verification
dc.typeConference paper
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