Differential Privacy Protection of Face Images Based on Region Growing

IF 1.2 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Chao Liu, Jing Yang, Weinan Zhao, Yining Zhang, Cuiping Shi, Fengjuan Miao, Jinsong Zhang
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引用次数: 4

Abstract

Face images, as an information carrier, are rich in sensitive information. Direct publication of these images would cause privacy leak, due to their natural weak privacy. Most of the existing privacy protection methods for face images adopt data publication under a non-interactive framework. However, the E-effect under this framework covers the entire image, such that the noise influence is uniform across the image. To solve the problem, this paper proposes region growing publication (RGP), an algorithm for the interactive publication of face images under differential privacy. This innovative algorithm combines the region growing technique with differential privacy technique. The privacy budget E is dynamically allocated, and the Laplace noise is added, according to the similarity between adjacent sub-images. To measure this similarity more effectively, the fusion similarity measurement mechanism (FSMM) was designed, which better adapts to the intrinsic attributes of images. Different from traditional region growing rules, the FSMM fully considers various attributes of images, including brightness, contrast, structure, color, texture, and spatial distribution. To further enhance algorithm feasibility, RGP was extended to atypical region growing publication (ARGP). While RGP limits the region growing direction between adjacent sub-images, ARGP searches for the qualified sub-images across the image, with the aid of the exponential mechanism, thereby expanding the region merging scope of the seed point. The results show that our algorithm can satisfy E-differential privacy, and the denoised image still have a high availability.
基于区域增长的人脸图像差异隐私保护
人脸图像作为信息载体,包含着丰富的敏感信息。直接发布这些图片会导致隐私泄露,因为它们天生的隐私性较弱。现有的人脸图像隐私保护方法大多采用非交互式框架下的数据发布。然而,该框架下的E效应覆盖了整个图像,使得噪声影响在整个图像上是均匀的。为了解决这一问题,本文提出了区域增长发布(RGP),这是一种在差分隐私下交互式发布人脸图像的算法。该创新算法将区域增长技术与差分隐私技术相结合。根据相邻子图像之间的相似性,动态分配隐私预算E,并添加拉普拉斯噪声。为了更有效地测量这种相似性,设计了融合相似性测量机制(FSMM),该机制更好地适应图像的内在属性。与传统的区域生长规则不同,FSMM充分考虑了图像的各种属性,包括亮度、对比度、结构、颜色、纹理和空间分布。为了进一步增强算法的可行性,将RGP扩展到非典型区域增长出版物(ARGP)。虽然RGP限制了相邻子图像之间的区域生长方向,但ARGP借助指数机制在图像上搜索合格的子图像,从而扩大了种子点的区域合并范围。结果表明,我们的算法可以满足E-差分隐私,去噪后的图像仍然具有很高的可用性。
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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来源期刊
Traitement Du Signal
Traitement Du Signal 工程技术-工程:电子与电气
自引率
21.10%
发文量
162
审稿时长
>12 weeks
期刊介绍: The TS provides rapid dissemination of original research in the field of signal processing, imaging and visioning. Since its founding in 1984, the journal has published articles that present original research results of a fundamental, methodological or applied nature. The editorial board welcomes articles on the latest and most promising results of academic research, including both theoretical results and case studies. The TS welcomes original research papers, technical notes and review articles on various disciplines, including but not limited to: Signal processing Imaging Visioning Control Filtering Compression Data transmission Noise reduction Deconvolution Prediction Identification Classification.
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