A Comparative Study on the Privacy Risks of Face Recognition Libraries

István Fábián, G. Gulyás
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Abstract

The rapid development of machine learning and the decreasing costs of computational resources has led to a widespread usage of face recognition. While this technology offers numerous benefits, it also poses new risks. We consider risks related to the processing of face embeddings, which are floating point vectors representing the human face in an identifying way. Previously, we showed that even simple machine learning models are capable of inferring demographic attributes from embeddings, leading to the possibility of re-identification attacks. This paper examines three popular Python libraries for face recognition, comparing their face detection performance and inspecting how much risk each library's embeddings pose regarding the aforementioned data leakage. Our experiments were conducted on a balanced face image dataset of different sexes and races, allowing us to discover biases in our results.
人脸识别库隐私风险的比较研究
随着机器学习技术的快速发展和计算资源成本的不断降低,人脸识别技术得到了广泛的应用。虽然这项技术带来了许多好处,但它也带来了新的风险。我们考虑了与人脸嵌入处理相关的风险,人脸嵌入是一种以识别方式表示人脸的浮点向量。之前,我们表明,即使是简单的机器学习模型也能够从嵌入中推断人口统计属性,从而导致重新识别攻击的可能性。本文研究了三个流行的Python人脸识别库,比较了它们的人脸检测性能,并检查了每个库的嵌入对上述数据泄漏造成的风险。我们的实验是在一个平衡的不同性别和种族的面部图像数据集上进行的,这使我们能够发现结果中的偏见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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