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A multi-perspective holistic approach to Kinship Verification in the Wild

机译:野外亲缘关系验证的多角度整体方法

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摘要

The automatic verification of kinship is a challenging problem that recently attracted much interest from the research community. It consists in telling whether two individuals are related or not, based on the analysis of their facial images. This is a challenging task since it has to deal with differences in race, gender and age between subjects. In addition, the unpredictable amount of genetic information shared by relatives reflects into individuals showing different degrees of facial similarity. Kinship recognition in the wild introduces more difficulties, since the images to be analyzed can have low resolutions, different illuminations, resolutions, face orientations, expressions and occlusions. Due to the characteristics of the image in analysis, which highly reduces the discriminative power of local features, we address kinship recognition in the wild with a multi-perspective holistic approach. The image pairs to be labeled as kin or non-kin are first characterized by selecting the most relevant variables from the combination of different global textural features. The resulting feature vectors are then used to feed an SVM classifier, which has been assessed on the Kinship Face in the Wild (KinFaceW) dataset over different sub-classes of parent-child relationships. Experimental results show that our method provides, on the same data, optimal accuracies with respect to other approaches and outperforms the recognition abilities of human beings.
机译:亲属关系的自动验证是一个具有挑战性的问题,最近引起了研究界的极大兴趣。它包括根据对他们的面部图像的分析来判断两个人是否相关。这是一项具有挑战性的任务,因为它必须处理受试者之间种族,性别和年龄的差异。另外,亲戚们共享的不可预测的遗传信息数量反映出个体显示出不同程度的面部相似性。由于要分析的图像可能具有较低的分辨率,不同的光照,分辨率,面部朝向,表情和遮挡,因此在野外识别亲属关系会带来更多困难。由于分析中图像的特征极大地降低了局部特征的判别力,因此我们采用多角度的整体方法来解决野外的亲属关系识别问题。首先通过从不同整体纹理特征的组合中选择最相关的变量来表征要标记为亲属或非亲属的图像对。然后,将所得的特征向量用于提供SVM分类器,该分类器已在父子关系的不同子类上的“野外亲属关系”(KinFaceW)数据集中进行了评估。实验结果表明,我们的方法在相同数据上提供了相对于其他方法的最佳精度,并且优于人类的识别能力。

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