研究人脸识别训练数据中包含对个体人脸识别的影响

Chris Dulhanty, A. Wong
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引用次数: 7

摘要

现代人脸识别系统利用包含数十万特定个体面部图像的数据集来训练深度卷积神经网络,以学习嵌入空间,将任意个体的面部映射到其身份的向量表示。人脸识别系统在人脸验证(1:1)和人脸识别(1:1:N)任务中的性能直接关系到嵌入空间区分身份的能力。最近,公众对MS-Celeb-1M和MegaFace等大规模人脸识别训练数据集的来源和隐私影响进行了重大审查,因为许多人对他们的脸被用于训练可以实现大规模监控的军民两用技术感到不舒服。然而,在训练数据中包含个人对派生系统识别他们的能力的影响以前没有研究过。在这项工作中,我们审计ArcFace,一个最先进的,开源的人脸识别系统,在一个大规模的人脸识别实验超过一百万分心图像。我们发现,对于模型训练数据中存在的个体,Rank-1人脸识别准确率为79.71%,对于不存在的个体,准确率为75.73%。这种准确性上的适度差异表明,使用深度学习的人脸识别系统对他们所训练的个人工作得更好,当人们考虑到所有主要的开源人脸识别训练数据集在收集过程中都没有获得个人的知情同意时,这就会产生严重的隐私影响。
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Investigating the Impact of Inclusion in Face Recognition Training Data on Individual Face Identification
Modern face recognition systems leverage datasets containing images of hundreds of thousands of specific individuals' faces to train deep convolutional neural networks to learn an embedding space that maps an arbitrary individual's face to a vector representation of their identity. The performance of a face recognition system in face verification (1:1) and face identification (1:N) tasks is directly related to the ability of an embedding space to discriminate between identities. Recently, there has been significant public scrutiny into the source and privacy implications of large-scale face recognition training datasets such as MS-Celeb-1M and MegaFace, as many people are uncomfortable with their face being used to train dual-use technologies that can enable mass surveillance. However, the impact of an individual's inclusion in training data on a derived system's ability to recognize them has not previously been studied. In this work, we audit ArcFace, a state-of-the-art, open source face recognition system, in a large-scale face identification experiment with more than one million distractor images. We find a Rank-1 face identification accuracy of 79.71% for individuals present in the model's training data and an accuracy of 75.73% for those not present. This modest difference in accuracy demonstrates that face recognition systems using deep learning work better for individuals they are trained on, which has serious privacy implications when one considers all major open source face recognition training datasets do not obtain informed consent from individuals during their collection.
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