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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Semi-Coupled Synthesis and Analysis Dictionary Pair Learning for Kinship Verification
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Semi-Coupled Synthesis and Analysis Dictionary Pair Learning for Kinship Verification

机译:半耦合合成和分析词典对亲属验证的学习

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摘要

Kinship verification is an interesting and important problem in the fields of computer vision. In practice, the biggest obstacle in kinship verification is that the representation capability of extracted features may not be powerful due to the significant differences between facial images of family members. To effectively address this problem, we propose a semi-coupled synthesis and analysis dictionary pair learning (SSADL) approach, which can reduce the differences between facial images. Specifically, SSADL jointly learns two view-specific synthesis-analysis dictionary pairs as well as a mapping matrix from the training data of parent and child, with which, the heterogeneous facial images of parent and child can be transformed into coding coefficients of the same subspace, such that the kinship verification task can be conducted using the coding coefficients. Besides, we also design a hard sample based coefficient discriminant term to ensure that the obtained coefficients own favorable discriminability. Experimental results on several publicly used benchmarks show the effectiveness of our proposed approach.
机译:亲属验证是计算机愿景领域的一个有趣和重要的问题。在实践中,血缘关系验证中最大的障碍是由于家庭成员的面部图像之间的显着差异,提取特征的表示能力可能无法强大。为了有效解决这个问题,我们提出了一个半耦合的合成和分析字典对学习(SSADL)方法,其可以减少面部图像之间的差异。具体地,SSADL共同学习了两个特定于特定的综合分析字典对以及来自父母和子的训练数据的映射矩阵,其中,可以将父和子的异构面部图像转换为同一子空间的编码系数,例如可以使用编码系数进行亲属验证任务。此外,我们还设计了基于硬样的系数判别术语,以确保所获得的系数具有良好的辨别性。若干公开使用基准的实验结果表明了我们提出的方法的有效性。

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