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Cross-Generation Kinship Verification with Sparse Discriminative Metric

机译:稀疏判别指标的跨代亲属验证

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摘要

Kinship verification is a very important technique in many real-world applications, e.g., personal album organization, missing person investigation and forensic analysis. However, it is extremely difficult to verify a family pair with generation gap, e.g., father and son, since there exist both age gap and identity variation. It is essential to well fight off such challenges to achieve promising kinship verification performance. To this end, we propose a towards-young cross-generation model for effective kinship verification by mitigating both age and identity divergences. Specifically, we explore a conditional generative model to bring in an intermediate domain to bridge each pair. Thus, we could extract more effective features through deep architectures with a newly-designed Sparse Discriminative Metric Loss (SDM-Loss), which is exploited to involve the positive and negative information. Experimental results on kinship benchmark demonstrate the superiority of our proposed model by comparing with the state-of-the-art kinship verification methods.
机译:亲属关系验证是许多实际应用程序中非常重要的技术,例如,个人相册组织,失踪人员调查和取证分析。然而,由于年龄差距和身份变化都存在,因此很难检验具有父亲和儿子等世代差距的家庭对。重要的是要很好地克服这些挑战,以实现有希望的亲属验证性能。为此,我们提出了一种跨年龄的跨世代模型,以通过减轻年龄和身份差异来进行有效的亲缘关系验证。具体来说,我们探索一个条件生成模型,以引入一个中间域来桥接每一对。因此,我们可以通过具有新设计的稀疏判别度量损失(SDM-Loss)的深度体系结构,通过深度架构来提取更有效的特征,该特征被利用来涉及正面和负面信息。通过与亲缘关系验证方法进行比较,亲属基准的实验结果证明了我们提出的模型的优越性。

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