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Kinship Verification based Deep and Tensor Features through Extreme Learning Machine

机译:基于亲属验证的深层和张量通过极端学习机

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Checking the kinship of facial images is a difficult research topic in computer vision that has attracted attention in recent years. The methods suggested so far are not strong enough to predict kinship relationships only by facial appearance. To mitigate this problem, we propose a new approach called Deep-Tensor+ELM to kinship verification based on deep (VGG-Face descriptor) and tensor (BSIF-Tensor & LPQ-Tensor using MSIDA method) features through Extreme Learning Machine (ELM). While ELM aims to deal with small size training features dimension, deep and tensor features are proven to provide significant enhancement over shallow features or vector-based counterparts. We evaluate our proposed method on the largest kinship benchmark namely FIW database using four Grandparent-Grandchild relations (GF-GD, GF-GS, GM-GD and GM-GS). The results obtained are positively compared with some modern methods, including those that rely on deep learning.
机译:检查面部图像的血缘关系是近年来引起关注的计算机视觉中的艰难研究课题。到目前为止所示的方法不足以通过面部外观预测血缘关系关系。为了缓解这个问题,我们提出了一种新的方法,称为深度+榆树到基于深度(VGG面描述符)和张量(使用MSIDA方法的BSIF-Tensor&LPQ-Tensor)功能,通过极端学习机(ELM)来验证。虽然ELM旨在处理小尺寸的训练功能,但验证,深度和张量特征是在浅薄功能或基于向量的对应方面提供显着的增强。我们使用四个祖父母 - 孙子关系(GF-GD,GF-GS,GM-GD和GM-GS)评估我们提出的最大亲属基准的建议方法。与一些现代方法相比,获得的结果是积极的,包括那些依赖深层学习的方法。

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