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首页> 外文期刊>Cybernetics, IEEE Transactions on >Prototype-Based Discriminative Feature Learning for Kinship Verification
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Prototype-Based Discriminative Feature Learning for Kinship Verification

机译:基于原型的鉴别特征学习用于亲缘关系验证

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摘要

In this paper, we propose a new prototype-based discriminative feature learning (PDFL) method for kinship verification. Unlike most previous kinship verification methods which employ low-level hand-crafted descriptors such as local binary pattern and Gabor features for face representation, this paper aims to learn discriminative mid-level features to better characterize the kin relation of face images for kinship verification. To achieve this, we construct a set of face samples with unlabeled kin relation from the labeled face in the wild dataset as the reference set. Then, each sample in the training face kinship dataset is represented as a mid-level feature vector, where each entry is the corresponding decision value from one support vector machine hyperplane. Subsequently, we formulate an optimization function by minimizing the intraclass samples (with a kin relation) and maximizing the neighboring interclass samples (without a kin relation) with the mid-level features. To better use multiple low-level features for mid-level feature learning, we further propose a multiview PDFL method to learn multiple mid-level features to improve the verification performance. Experimental results on four publicly available kinship datasets show the superior performance of the proposed methods over both the state-of-the-art kinship verification methods and human ability in our kinship verification task.
机译:在本文中,我们提出了一种新的基于原型的鉴别特征学习(PDFL)方法,用于亲属关系验证。与以前的大多数亲缘关系验证方法不同,该方法使用低级手工制作的描述符(例如局部二进制模式和Gabor特征)来进行人脸表示,本文旨在学习区分性的中层特征,以更好地表征人脸图像的亲缘关系以进行亲缘关系验证。为此,我们从野生数据集中的标记面部构造了一组具有未标记亲属关系的面部样本作为参考集。然后,将训练面部亲属数据集中的每个样本表示为中间特征向量,其中每个条目都是来自一个支持向量机超平面的相应决策值。随后,我们通过最小化类内样本(具有亲属关系)并最大化具有中间级别特征的相邻类间类样本(不具有亲属关系)来制定优化函数。为了更好地使用多个低级功能进行中级功能学习,我们进一步提出了一种多视图PDFL方法来学习多个中级功能,以提高验证性能。在四个公开的亲属关系数据集上的实验结果表明,在我们的亲属关系验证任务中,所提出的方法优于最新的亲属关系验证方法和人类能力。

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