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Self-similarity representation of Weber faces for kinship classification

机译:韦伯脸谱的自相似表示

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Establishing kinship using images can be utilized as context information in different applications including face recognition. However, the process of automatically detecting kinship in facial images is a challenging and relatively less explored task. The reason for this includes limited availability of datasets as well as the inherent variations amongst kins. This paper presents a kinship classification algorithm that uses the local description of the pre-processed Weber face image. A kinship database is also prepared that contains images pertaining to 272 kin pairs. The database includes images of celebrities (and their kins) and has four ethnicity groups and seven kinship groups. The proposed algorithm outperforms an existing algorithm and yields a classification accuracy of 75.2%.
机译:使用图像建立血缘关系可以用作包括面部识别在内的不同应用程序中的上下文信息。然而,自动检测面部图像中的亲属关系的过程是一项具有挑战性且相对较少探索的任务。其原因包括数据集的可用性有限以及亲属之间的固有差异。本文提出了一种亲属分类算法,该算法使用预处理的韦伯脸部图像的局部描述。还准备了一个亲属数据库,其中包含与272个亲对有关的图像。该数据库包含名人(及其亲属)的图像,并具有四个种族组和七个亲属组。提出的算法优于现有算法,分类精度为75.2%。

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