A Hybrid Model for Natural Face De-Identiation with Adjustable Privacy

Yunqian Wen, Bo Liu, Rong Xie, Yunhui Zhu, Jingyi Cao, Li Song
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引用次数: 5

Abstract

As more and more personal photos are shared and tagged in social media, security and privacy protection are becoming an unprecedentedly focus of attention. Avoiding privacy risks such as unintended verification, becomes increasingly challenging. To enable people to enjoy uploading photos without having to consider these privacy concerns, it is crucial to study techniques that allow individuals to limit the identity information leaked in visual data. In this paper, we propose a novel hybrid model consists of two stages to generate visually pleasing de-identified face images according to a single input. Meanwhile, we successfully preserve visual similarity with the original face to retain data usability. Our approach combines latest advances in GAN-based face generation with well-designed adjustable randomness. In our experiments we show visually pleasing de-identified output of our method while preserving a high similarity to the original image content. Moreover, our method adapts well to the verificator of unknown structure, which further improves the practical value in our real life.
一种具有可调隐私的自然人脸去识别混合模型
随着越来越多的个人照片在社交媒体上被分享和标记,安全和隐私保护成为前所未有的关注焦点。避免诸如意外验证之类的隐私风险变得越来越具有挑战性。为了使人们能够享受上传照片而不必考虑这些隐私问题,研究允许个人限制视觉数据中泄露的身份信息的技术是至关重要的。在本文中,我们提出了一种新的混合模型,该模型由两个阶段组成,根据单个输入生成视觉上令人愉悦的去识别人脸图像。同时,我们成功地保持了与原始人脸的视觉相似性,以保持数据的可用性。我们的方法结合了基于gan的人脸生成的最新进展和精心设计的可调节随机性。在我们的实验中,我们展示了视觉上令人愉悦的去识别输出,同时保持了与原始图像内容的高度相似性。此外,该方法对未知结构的验证具有较好的适应性,进一步提高了该方法在实际生活中的实用价值。
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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