As billions of personal data being shared through social media and network, the data privacy and security have drawn an increasing attention. Several attempts have been made to alleviate the leakage of identity information from face photos, with the aid of, e.g., image obfuscation techniques. However, most of the present results are either perceptually unsatisfactory or ineffective against face recognition systems. Our goal in this paper is to develop a technique that can encrypt the personal photos such that they can protect users from unauthorized face recognition systems but remain visually identical to the original version for human beings. To achieve this, we propose a targeted identity-protection iterative method (TIP-IM) to generate adversarial identity masks which can be overlaid on facial images, such that the original identities can be concealed without sacrificing the visual quality. Extensive experiments demonstrate that TIP-IM provides 95\%+ protection success rate against various state-of-the-art face recognition models under practical test scenarios. Besides, we also show the practical and effective applicability of our method on a commercial API service.
翻译:由于通过社交媒体和网络共享数十亿个人数据,数据隐私和安全已引起越来越多的注意,在图像模糊技术等帮助下,为减轻脸部照片泄露身份信息的情况作出了若干努力,但目前的结果大多不是感觉不令人满意,就是对面识别系统无效;我们本文件的目标是开发一种技术,可以对个人照片进行加密,从而保护用户不受未经授权的面部识别系统的影响,但与人类的原始版本保持直观相同;为此,我们提议了一种有针对性的身份保护迭代法(TIP-IM),以产生可覆盖面部图像的对抗性身份面具,使原始身份可以在不牺牲视觉质量的情况下被隐藏;广泛的实验表明,TIP-IM在实际测试情景下针对各种最先进的面部识别模型提供95 ⁇ 保护成功率。此外,我们还展示了我们的方法在商业的API服务上的实际和有效适用性。