小狗:转换支持的个性化隐私保护部分图像共享

Jianping He, Bin Liu, Deguang Kong, Xuan Bao, Na Wang, Hongxia Jin, G. Kesidis
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引用次数: 46

摘要

通过在线社交网络分享照片是一种越来越流行的时尚。然而,这对最终用户构成了严重的威胁,因为照片中的私人信息可能会在未经用户同意的情况下与他人不恰当地分享。本文提出了一种采用动态隐私保护部分图像共享技术(即puppy)的系统设计与实现,该技术允许数据所有者在图像中规定特定的隐私区域(如人脸、社会保险号),并为每个用户设置相应的不同隐私策略。作为一种通用技术和系统,puppy针对照片服务提供商(如Flicker, Facebook等)方面的过度特权和未经授权共享照片的威胁。为此,puppy利用图像扰动技术对原始图像中的敏感区域进行“加密”,因此它可以自然地支持流行的图像转换(如裁剪,旋转),并且与大多数图像处理库兼容。在19,000张图像上进行的大量实验表明,puppy对隐私保护非常有效,并且只产生很小的计算开销。此外,小狗为不同的隐私设置提供了很高的灵活性,并且对不同类型的隐私攻击非常健壮。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PUPPIES: Transformation-Supported Personalized Privacy Preserving Partial Image Sharing
Sharing photos through Online Social Networks is an increasingly popular fashion. However, it poses a seriousthreat to end users as private information in the photos maybe inappropriately shared with others without their consent. This paper proposes a design and implementation of a system using a dynamic privacy preserving partial image sharing technique (namely PUPPIES), which allows data owners to stipulate specific private regions (e.g., face, SSN number) in an image and correspondingly set different privacy policies for each user. As a generic technique and system, PUPPIES targets at threats about over-privileged and unauthorized sharing of photos at photo service provider (e.g., Flicker, Facebook, etc) side. To this end, PUPPIES leverages the image perturbation technique to "encrypt" the sensitive areas in the original images, and therefore it can naturally support popular image transformations (such as cropping, rotation) and is well compatible with most image processing libraries. The extensive experiments on 19,000 images demonstrate that PUPPIES is very effective for privacy protection and incurs only a small computational overhead. In addition, PUPPIES offers high flexibility for different privacy settings, and is very robust to different types of privacy attacks.
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