细粒度人脸验证:数据集和基线结果

Junlin Hu, Jiwen Lu, Yap-Peng Tan
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引用次数: 10

摘要

研究了无约束条件下的细粒度人脸验证问题。对于传统的人脸验证任务,验证模型是用一些正面和负面的人脸对来训练的,其中每一个正面的样本对包含同一个人的两张人脸图像,而每一个负面的样本对通常包含来自不同主体的两张人脸图像。然而,在许多实际应用中,即使在面部验证中被认为是阴性的一对,双胞胎的面部外观看起来也非常相似。因此,对于实际的人脸验证系统来说,区分给定的人脸对以确定它是来自同一个人还是双胞胎是很重要的,因为大多数现有的人脸验证系统在这种情况下都不能很好地工作。在这项工作中,我们将问题定义为细粒度人脸验证,并收集包含455对同卵双胞胎的无约束人脸数据集来生成负人脸对,以评估几种用于细粒度无约束人脸验证的基线验证模型。在无监督设置和限制设置下的基准测试结果表明,在野外进行细粒度人脸验证是一项挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-grained face verification: Dataset and baseline results
This paper investigates the problem of fine-grained face verification under unconstrained conditions. For the conventional face verification task, the verification model is trained with some positive and negative face pairs, where each positive sample pair contains two face images of the same person while each negative sample pair usually consists of two face images from different subjects. However, in many real applications, facial appearance of the twins looks very similar even if they are considered as a negative pair in face verification. Therefore, it is important to differentiate a given face pair to determine whether it is from the same person or a twins for a practical face verification system because most existing face verification systems fails to work well in such a scenario. In this work, we define the problem as fine-grained face verification and collect an unconstrained face dataset which contains 455 pairs of identical twins to generate negative face pairs to evaluate several baseline verification models for fine-grained unconstrained face verification. Benchmark results on the unsupervised setting and restricted setting show the challenge of the fine-grained face verification in the wild.
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