使用未标记合成数据的无监督人脸识别

F. Boutros, Marcel Klemt, Meiling Fang, Arjan Kuijper, N. Damer
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引用次数: 13

摘要

过去几年,人脸识别的主要研究创新集中在利用多类分类损失的变化在大规模身份标记数据集上训练深度神经网络。然而,由于隐私和道德问题的增加,许多这些数据集被它们的创建者撤回。最近,人们提出了隐私友好型合成数据作为隐私敏感型真实数据的替代方案,以符合隐私法规并确保人脸识别研究的连续性。在本文中,我们提出了一个基于未标记合成数据的无监督人脸识别模型(USynthFace)。我们提出的USynthFace学习最大化同一合成实例的两个增强图像之间的相似性。我们通过大量的几何和颜色转换以及有助于USynthFace模型训练的基于gan的增强来实现这一点。我们还对USynthFace的不同组件进行了大量实证研究。通过提出的增强操作集,我们证明了USynthFace在使用未标记的合成数据实现相对较高的识别精度方面的有效性。训练代码和预训练模型可在https://github.com/fdbtrs/Unsupervised-Face-Recognition-using-Unlabeled-Synthetic-Data上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Face Recognition using Unlabeled Synthetic Data
Over the past years, the main research innovations in face recognition focused on training deep neural networks on large-scale identity-labeled datasets using variations of multi-class classification losses. However, many of these datasets are retreated by their creators due to increased privacy and ethical concerns. Very recently, privacy-friendly synthetic data has been proposed as an alternative to privacy-sensitive authentic data to comply with privacy regulations and to ensure the continuity of face recognition research. In this paper, we propose an unsupervised face recognition model based on unlabeled synthetic data (USynthFace). Our proposed USynthFace learns to maximize the similarity between two augmented images of the same synthetic instance. We enable this by a large set of geometric and color transformations in addition to GAN-based augmentation that contributes to the USynthFace model training. We also conduct numerous empirical studies on different components of our USynthFace. With the proposed set of augmentation operations, we proved the effectiveness of our USynthFace in achieving relatively high recognition accuracies using unlabeled synthetic data. The training code and pretrained model are publicly available under https://github.com/fdbtrs/Unsupervised-Face-Recognition-using-Unlabeled-Synthetic-Data.
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