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GARP-face: Balancing privacy protection and utility preservation in face de-identification

机译:GARP-face:在面部识别中平衡隐私保护和实用程序保护

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Face de-identification, the process of preventing a person' identity from being connected with personal information, is an important privacy protection tool in multimedia data processing. With the advance of face detection algorithms, a natural solution is to blur or block facial regions in visual data so as to obscure identity information. Such solutions however often destroy privacy-insensitive information and hence limit the data utility, e.g., gender and age information. In this paper we address the de-identification problem by proposing a simple yet effective framework, named GARP-Face, that balances utility preservation in face deidentification. In particular, we use modern facial analysis technologies to determine the Gender, Age, and Race attributes of facial images, and Preserving these attributes by seeking corresponding representatives constructed through a gallery dataset. We evaluate the proposed approach using the MORPH dataset in comparison with several state-of-the-art face de-identification solutions. The results show that our method outperforms previous solutions in preserving data utility while achieving similar degree of privacy protection.
机译:面部去身份识别是防止个人身份与个人信息联系在一起的过程,是多媒体数据处理中重要的隐私保护工具。随着面部检测算法的进步,自然的解决方案是模糊或阻止视觉数据中的面部区域,以使身份信息模糊。但是,这样的解决方案经常破坏对隐私不敏感的信息,因此限制了数据的实用性,例如性别和年龄信息。在本文中,我们通过提出一个简单而有效的框架GARP-Face来解决去识别问题,该框架在人脸去识别中平衡实用程序的保存。特别是,我们使用现代的面部分析技术来确定面部图像的“性别”,“年龄”和“种族”属性,并通过寻找通过图库数据集构建的相应代表来保留这些属性。我们将MORPH数据集与几种最新的人脸去识别解决方案进行比较,评估提出的方法。结果表明,在保持相似程度的隐私保护的同时,我们的方法在保留数据实用性方面优于以前的解决方案。

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