Synthetic Data for Face Recognition: Current State and Future Prospects

F. Boutros, V. Štruc, Julian Fierrez, N. Damer
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引用次数: 14

Abstract

Over the past years, deep learning capabilities and the availability of large-scale training datasets advanced rapidly, leading to breakthroughs in face recognition accuracy. However, these technologies are foreseen to face a major challenge in the next years due to the legal and ethical concerns about using authentic biometric data in AI model training and evaluation along with increasingly utilizing data-hungry state-of-the-art deep learning models. With the recent advances in deep generative models and their success in generating realistic and high-resolution synthetic image data, privacy-friendly synthetic data has been recently proposed as an alternative to privacy-sensitive authentic data to overcome the challenges of using authentic data in face recognition development. This work aims at providing a clear and structured picture of the use-cases taxonomy of synthetic face data in face recognition along with the recent emerging advances of face recognition models developed on the bases of synthetic data. We also discuss the challenges facing the use of synthetic data in face recognition development and several future prospects of synthetic data in the domain of face recognition.
人脸识别的合成数据:现状与未来展望
在过去的几年里,深度学习能力和大规模训练数据集的可用性迅速发展,导致人脸识别准确性的突破。然而,由于在人工智能模型训练和评估中使用真实生物识别数据以及越来越多地使用数据饥渴的最先进的深度学习模型的法律和伦理问题,这些技术预计将在未来几年面临重大挑战。随着深度生成模型的最新进展及其在生成逼真和高分辨率合成图像数据方面的成功,隐私友好型合成数据最近被提出作为隐私敏感真实数据的替代方案,以克服在人脸识别开发中使用真实数据的挑战。这项工作旨在为人脸识别中合成人脸数据的用例分类提供一个清晰和结构化的图景,以及基于合成数据开发的人脸识别模型的最新进展。我们还讨论了在人脸识别发展中使用合成数据所面临的挑战,以及合成数据在人脸识别领域的几个未来前景。
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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