增强的同时保护:隐私保护图像过滤

Diego Arcelli, Alina Elena Baia, A. Milani, V. Poggioni
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引用次数: 1

摘要

隐私是深度学习模型的扩散所引起的一个重要问题。这些模型能够从我们的数据中提取未经授权的信息,特别是从社交网络上共享的图像中。在这项工作中,我们提出了一种嵌套进化算法,能够优化instagram风格的图像过滤器序列,当应用于图像时,能够通过欺骗分类系统来保护它:我们将对抗性攻击转化为防御形式。与其他对抗式技术不同的是,我们的滤镜组合无法与每天广泛使用的用于增强照片和图像的任何其他滤镜组合区分开来,这些技术会添加人眼不易检测到但软件可以轻松识别的小扰动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhance while protecting: privacy preserving image filtering
Privacy is an important issue raised from the diffusion of deep learning models. These models are able to extract unauthorized information from our data, especially from the images shared on Social Networks. In this work we present a nested evolutionary algorithm able to optimize sequences of Instagram-style image filters that, when applied to an image, are able to protect it by fooling classification systems: we turn adversarial attacks into a defence form. Differently from other adversarial techniques adding small perturbations that cannot be easily detected by human eyes but can be easily recognized by softwares, our filter composition cannot be distinguished from any other filter composition used extensively every day to enhance photos and images.
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