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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Learning multi-view deep and shallow features through new discriminative subspace for bi-subject and tri-subject kinship verification
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Learning multi-view deep and shallow features through new discriminative subspace for bi-subject and tri-subject kinship verification

机译:学习多视图深层和浅浅的功能,通过新的鉴别子空间进行BI-PROCEST和TRI-CONSOCT KILSHIP验证

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摘要

This paper presents the combination of deep and shallow features (multi-view features) using the proposed metric learning (SILD+WCCN/LR) approach for kinship verification. Our approach based on an automatic and more efficient two-step learning into deep/shallow information. First, five layers for deep features and five shallow features (i.e. texture and shape), representing more precisely facial features involved in kinship relations (Father-Son, Father-Daughter, Mother-Son, and Mother-Daughter) are used to train the proposed Side-Information based Linear Discriminant Analysis integrating Within Class Covariance Normalization (SILD+WCCN) method. Then, each of the features projected through the discriminative subspace of the proposed SILD+WCCN metric learning method. Finally, a Logistic Regression (LR) method is used to fuse the six scores of the projected features. To show the effectiveness of our SILD+WCNN method, we do some experiments on LFW database. In term of evaluation, the proposed automatic Facial Kinship Verification (FKV) is compared with existing ones to show its effectiveness, using two challenging kinship databases. The experimental results showed the superiority of our FKV against existing ones and reached verification rates of 86.20% and 88.59% for bi-subject matching on the KinFaceW-II and TSKinFace databases, respectively. Verification rates for tri-subject matching of 90.94% and 91.23% on the available TSKinFace database for Father-Mother-Son and Father-Mother-Daughter, respectively.
机译:本文使用所提出的公制学习(Sild + WCCN / LR)方法来介绍深层和浅浅功能(多视图功能)的组合,用于亲属验证方法。我们的方法基于自动和更有效的两步学习深入/浅信息。一是五层,深度特征和五个浅浅特征(即质地和形状),代表依据血缘关系关系(父子,父亲,母子和母女)的更准确的面部特征用于训练基于侧面信息的基于侧信息的基于信息的线性判别分析集成在Class Covariance标准化(Sild + WCCN)方法中。然后,通过所提出的Sild + WCCN度量学习方法的判别子空间投影的每个功能。最后,使用逻辑回归(LR)方法融合预计特征的六个分数。为了显示我们Sild + WCNN方法的有效性,我们对LFW数据库进行了一些实验。在评估期间,使用两个具有挑战性的亲属数据库,将所提出的自动面部亲属验证(FKV)与现有的效果进行比较。实验结果表明,我们的FKV对现有的优势,并分别在Kinfacew-II和Tskinface数据库上达到了86.20%和88.59%的验证率为86.20%和88.59%。父母儿子和父母的可用TSkinface数据库分别为90.94%和91.23%的TRI-inperiach匹配的验证率。

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