Natural Face Anonymization via Latent Space Layers Swapping

Emna BenSaid, Mohamed Neji, A. Alimi
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Abstract

Machine learning is widely recognized as a key driver of technological progress. Artificial Intelligence (AI) applications that interact with humans require access to vast quantities of human image data. However, the use of large, real-world image datasets containing faces raises serious concerns about privacy. In this paper, we examine the issue of anonymizing image datasets that include faces. Our approach modifies the facial features that contribute to personal identification, resulting in an altered facial appearance that conceals the person's identity. This is achieved without compromising other visual features such as posture, facial expression, and hairstyle while maintaining a natural-looking appearance. Finally, Our method offers adjustable levels of privacy, computationally efficient, and has demonstrated superior performance compared to existing methods.
通过潜在空间层交换的自然人脸匿名化
机器学习被广泛认为是技术进步的关键驱动力。与人类交互的人工智能(AI)应用程序需要访问大量的人类图像数据。然而,使用包含人脸的大型真实图像数据集引发了对隐私的严重担忧。在本文中,我们研究了包含人脸的匿名图像数据集的问题。我们的方法修改了有助于个人识别的面部特征,从而改变了面部外观,隐藏了人的身份。在不影响其他视觉特征的情况下,如姿势、面部表情和发型,同时保持自然的外观。最后,我们的方法提供了可调整的隐私级别,计算效率高,并且与现有方法相比表现出优越的性能。
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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