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Ensemble Learning Based on Convolutional Kernel Networks Features for Kinship Verification

机译:基于卷积核网络特征的集成学习用于亲缘关系验证

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摘要

Kinship verification based on facial images is one of the popular research topic in the field of face recognition. It's still a challenging problem due to many inevitable factors, such as varying illumination, poses, and expressions. And traditional handcrafted features are usually not robust enough. For the above reasons, in this paper, we extract kernel features by Convolutional Kernel Networks (CKN), which are invariant to particular transformations. After extracting the CKN features, we use feature bagging to classify. It's an ensemble learning method that attempts to reduce the correlation between estimators in an ensemble by training them on random samples of features instead of the entire feature set. Specifically, the CKN features are randomly sampled to train an SVM classifier each time, and then multiple SVM classifiers are combined by majority voting to make prediction. In addition, we collect a large kinship face dataset named LarG-KinFace from Internet search under uncontrolled conditions. The proposed method is evaluated on three datasets KinFaceW-I, KinFaceW-II, and LarG-KinFace. Experimental results demonstrate the efficacy of the proposed method.
机译:基于面部图像的亲缘关系验证是面部识别领域的热门研究主题之一。由于许多不可避免的因素(例如变化的光照,姿势和表情),这仍然是一个具有挑战性的问题。传统的手工功能通常不够坚固。由于以上原因,在本文中,我们通过卷积核网络(CKN)提取了内核特征,这些特征对于特定的变换是不变的。提取CKN特征后,我们使用特征装袋进行分类。这是一种整体学习方法,它试图通过对特征的随机样本(而不是对整个特征集)进行训练来减少整体中估计量之间的相关性。具体而言,每次随机采样CKN特征以训练SVM分类器,然后通过多数表决将多个SVM分类器组合在一起进行预测。此外,我们在不受控制的条件下通过Internet搜索收集了一个名为LarG-KinFace的大型亲戚面孔数据集。在三个数据集KinFaceW-I,KinFaceW-II和LarG-KinFace上对提出的方法进行了评估。实验结果证明了该方法的有效性。

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