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Multiple Anthropological Fisher Kernel Framework and Its Application to Kinship Verification

机译:多种人类学费舍尔内核框架及其在亲缘关系验证中的应用

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This paper presents a novel multiple anthropological Fisher kernel (MAFK) framework for kinship verification. The proposed MAFK framework, which goes beyond the Mahalanobis distance metric learning, integrates multiple anthropology inspired features and derives semantically meaningful similarities between images. The major novelty of this paper comes from the following three aspects. First, three new anthropology inspired features (AIF) are derived by extracting the AIF-SIFT, AIF-WLD and AIF-DAISY features on images that are enhanced by an anthropology inspired similarity enhancement method extended from the SIFT flow method. Second, a novel multiple anthropological Fisher kernel framework (MAFK) is proposed which combines multiple features and their metrics between images in a unified paradigm. The MAFK is optimized as a constrained, non-negative, and weighted variant of the sparse representation problem regularized by the criterion of pushing away the nearby non-kinship samples and pulling close the kinship samples. Third, a novel normalized kernel similarity measure (NKSM) is proposed by normalizing the MAFK with the fractional power transformation and L2 normalization. The feasibility of the proposed MAFK framework is assessed on two representative kinship data sets, namely the KinFaceW-I and the KinFaceW-II data sets. The experimental results show the effectiveness of the proposed method.
机译:本文提出了一种新颖的多重人类学费舍尔核(MAFK)框架,用于亲缘关系验证。提出的MAFK框架超越了Mahalanobis距离度量学习,它融合了多种人类学启发的特征,并得出了图像之间在语义上有意义的相似性。本文的主要创新点来自以下三个方面。首先,通过提取图像上的AIF-SIFT,AIF-WLD和AIF-DAISY特征,得出了三个新的人类学启发特征(AIF),这些特征是通过从SIFT流方法扩展而来的人类学启发相似性增强方法来增强的。其次,提出了一种新颖的多重人类学费舍尔内核框架(MAFK),该框架在统一范例中将图像之间的多个特征及其度量结合在一起。 MAFK被优化为稀疏表示问题的约束,非负且加权变体,该准则通过推开附近的非亲属样本并拉近亲属样本的准则进行了规范化。第三,通过分数功率变换和L2归一化对MAFK进行归一化,提出了一种新颖的归一化核相似度度量(NKSM)。拟议的MAFK框架的可行性是根据两个具有代表性的亲属数据集进行评估的,即KinFaceW-I和KinFaceW-II数据集。实验结果表明了该方法的有效性。

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