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Mitigating effects of plastic surgery: Fusing face and ocular biometrics

机译:整形手术的减轻效果:融合面和眼睛生物识别

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The task of successfully matching face images obtained before and after plastic surgery is a challenging problem. The degree to which a face is altered depends on the type and number of plastic surgeries performed, and it is difficult to model such variations. Existing approaches use learning based methods that are either computationally expensive or rely on a set of training images. In this work, a fusion approach is proposed that combines information from the face and ocular regions to enhance recognition performance in the identification mode. The proposed approach provides the highest reported recognition performance on a publicly accessible plastic surgery database, with a rank-one accuracy of 87.4%. Compared to existing approaches, the proposed approach is not learning based and reduces computational requirements. Furthermore, a systematic study of the matching accuracies corresponding to various types of surgeries is presented.
机译:成功匹配塑料手术前后获得的面部图像是一个具有挑战性的问题。脸部被改变的程度取决于所执行的塑料手术的类型和数量,并且难以模拟这种变化。现有方法使用基于学习的方法,这些方法是计算地昂贵或依赖一组训练图像。在这项工作中,提出了一种融合方法,其将来自面部和眼部区域的信息结合在识别模式下提高识别性能。该方法在公开可访问的整形外科数据库上提供了最高报告的识别性能,等级为87.4%。与现有方法相比,所提出的方法不是基于学习并降低计算要求。此外,提出了对对应于各种类型的手术的匹配精度的系统研究。

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