人脸亲属关系验证的特征融合与NRML度量学习

Fahimeh Ramazankhani, Mahdi Yazdian Dehkordi, M. Rezaeian
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引用次数: 0

摘要

从面部图像中提取的特征被用于各种领域,如亲属关系验证。亲属关系验证系统通过分析一对人脸图像的面部特征来确定其亲属关系或非亲属关系。本研究采用不同的纹理和颜色特征,结合度量学习方法,对父子、父女、母子和母女四种亲属关系进行了亲属关系验证。首先通过融合有效特征,利用NRML度量学习生成判别特征向量,然后利用SVM分类器对亲缘关系进行验证。为了测量所提出方法的准确性,使用了KinFaceW-I和KinFaceW-II数据库。评价结果表明,特征融合和NRML度量学习方法能够提高亲属关系验证系统的性能。除了提出的方法外,还研究了从图像块或整个图像中提取特征的效果,并给出了结果。结果表明,以块的形式提取特征可以有效地提高亲属关系验证的最终准确性。
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Feature Fusion and NRML Metric Learning for Facial Kinship Verification
Features extracted from facial images are used in various fields such as kinship verification. The kinship verification system determines the kin or non-kin relation between a pair of facial images by analysing their facial features. In this research, different texture and color features have been used along with the metric learning method, to verify the kinship for the four kinship relations of father-son, father-daughter, mother-son and mother-daughter. First, by fusing effective features, NRML metric learning used to generate the discriminative feature vector, then SVM classifier used to verify to kinship relations. To measure the accuracy of the proposed method, KinFaceW-I and KinFaceW-II databases have been used. The results of the evaluations show that the feature fusion and NRML metric learning methods have been able to improve the performance of the kinship verification system. In addition to the proposed approach, the effect of feature extraction from the image blocks or the whole image is investigated and the results are presented. The results indicate that feature extraction in block form, can be effective in improving the final accuracy of kinship verification.
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