K-Same- siame - gan:基于生成对抗网络的人脸图像去识别超参数整定和混合精度训练的K-Same算法

Yi-Lun Pan, Min-Jhih Haung, Kuo-Teng Ding, Ja-Ling Wu, J. Jang
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引用次数: 13

摘要

对于拥有私人持有的个人数据收集的数据持有人,例如医院或政府实体,其披露和/或处理个人可识别数据受到法律的限制和禁止。然后,“我们如何确保数据持有者在个人数据图像中隐藏每个人的身份,同时在去识别化后仍然保留数据的某些有用方面?”变成了一个具有挑战性的问题。在这项工作中,我们提出了一种高分辨率面部图像去识别的方法,称为k-Same-Siamese-GAN,它利用k-Same-Anonymity机制、生成对抗网络和超参数调优方法。此外,为了加快模型训练速度和减少内存消耗,还采用了混合精度训练技术,使kSS-GAN在接近形式的身份上提供隐私保护的保证,训练效率也大大提高。最后,为了验证其适用性,将提出的工作应用于实际数据集- RafD和CelebA进行性能测试。除了保护高分辨率面部图像的隐私外,该系统还具有参数自动调优的能力,突破了可调参数数量的限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
K-Same-Siamese-GAN: K-Same Algorithm with Generative Adversarial Network for Facial Image De-identification with Hyperparameter Tuning and Mixed Precision Training
For a data holder, such as a hospital or a government entity, who has a privately held collection of personal data, in which the revealing and/or processing of the personal identifiable data is restricted and prohibited by law. Then, “how can we ensure the data holder does conceal the identity of each individual in the imagery of personal data while still preserving certain useful aspects of the data after de-identification?” becomes a challenge issue. In this work, we propose an approach towards high-resolution facial image de-identification, called k-Same-Siamese-GAN, which leverages the k-Same-Anonymity mechanism, the Generative Adversarial Network, and the hyperparameter tuning methods. Moreover, to speed up model training and reduce memory consumption, the mixed precision training technique is also applied to make kSS-GAN provide guarantees regarding privacy protection on close-form identities and be trained much more efficiently as well. Finally, to validate its applicability, the proposed work has been applied to actual datasets - RafD and CelebA for performance testing. Besides protecting privacy of high-resolution facial images, the proposed system is also Justified for its ability in automating parameter tuning and breaking through the limitation of the number of adjustable parameters.
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