基于选择方差的父母童年及其子女亲属关系验证

Madhu Oruganti, T. Meenpal, Saikat Majumder
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引用次数: 2

摘要

根据两张人脸图像的外观来估计其亲属关系是亲属关系验证的主要目的。基于年龄递进的亲属关系验证是本研究的难点之一。在孩子的童年时期,父母和孩子的面部特征会有很多相似之处。随着年龄的增长,儿童的面部特征与父母的面部特征不同且分散。评估它们的亲缘关系成为一项具有挑战性的任务。因此,收集了一个新的维度数据库,其中包含童年时期的父母及其子女的图像。本文提出并训练了一个度量,以确保模型能够预测给定的图像对是亲缘还是非亲缘。在训练模块中,计算所有对组合的梯度直方图(Histogram of Gradient, HoG)特征的差值,并计算每对的绝对差值。此外,选择最小方差用于评估亲属相似性特征。计算一个全局阈值来对亲属和非亲属进行分类。经过这种全面的培训后,测试也以类似的方式进行。训练模块中计算的全局阈值有效地用于测试模块中亲属验证的估计。给出了实验结果并进行了验证,准确率达到82%。
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Selective variance based kinship verification in parent's childhood and their children
Based on two facial image appearances estimating their kinship is the main aim of the kinship verification. Age progression-based kinship verification is one of the obscure parts in this research. The similarities in facial features between parent and their children will be numerous in their childhood. As age progress, child facial features are varied and dispersed from parent facial features. It becomes a challenging task to estimate their kinship. So, a new dimensional database with parent in childhood and their child images is collected. This paper proposes and trains a metric to ensure that the model can predict whether the given pair images are kin or non-kin. In training module, differences of Histogram of Gradient (HoG) features for all combinations of pairs are computed and each pair absolute differences are calculated. Further, selective minimum variances are used to assess the kin similarity features. A global threshold is computed to classify kins and non-kins. After this comprehensive training, testing is also done in a similar way. The computed global threshold in training module is effectively used to estimate kinship verification in testing module. Experimental results are presented and out performed with an accuracy of 82%.
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