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Anonymizing k-Facial Attributes via Adversarial Perturbations

机译:通过对抗扰动匿名K-Facial属性

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A face image not only provides details about the identity of a subject but also reveals several attributes such as gender, race, sexual orientation, and age. Advancements in machine learning algorithms and popularity of sharing images on the World Wide Web, including social media websites, have increased the scope of data analytics and information profiling from photo collections. This poses a serious privacy threat for individuals who do not want to be profiled. This research presents a novel algorithm for anonymizing selective attributes which an individual does not want to share without affecting the visual quality of images. Using the proposed algorithm, a user can select single or multiple attributes to be surpassed while preserving identity information and visual content. The proposed adversarial perturbation based algorithm embeds imperceptible noise in an image such that attribute prediction algorithm for the selected attribute yields incorrect classification result, thereby preserving the information according to user's choice. Experiments on three popular databases i.e. MUCT, LFWcrop, and CelebA show that the proposed algorithm not only anonymizes k-attributes, but also preserves image quality and identity information.
机译:面部形象不仅提供有关主题的身份的详细信息,还提供了几种属性,例如性别,种族,性取向和年龄。机器学习算法的进步和在全球网络上共享图像的普及,包括社交媒体网站,增加了来自照片集的数据分析和信息分析的范围。这对不想被思考的个人构成了严重的隐私威胁。本研究介绍了一种新颖的算法,用于匿名的选择性属性,在不影响图像的视觉质量的情况下,个人不想共享的匿名选择性属性。使用所提出的算法,用户可以选择单个或多个属性,同时保留身份信息和视觉内容。所提出的对抗基于扰动的算法在图像中嵌入了难以察觉的噪声,使得所选属性的属性预测算法产生不正确的分类结果,从而根据用户的选择保护信息。在三个流行数据库中的实验i.e. Scuct,Lfwrop和Celeba表明,所提出的算法不仅是匿名的k属性,而且保留了图像质量和身份信息。

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