Generating Adaptive Targeted Adversarial Examples for Content-Based Image Retrieval

Jiameng Pan, Xiaoguang Zhu, Peilin Liu
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引用次数: 1

Abstract

Massive accessible personal data on the Internet raises the risk of malicious retrieval. In this paper, we propose to conceal the images with the targeted adversarial attacks on content-based image retrieval. An imperceptible perturbation is added to the original image to generate adversarial examples, making the retrieval results similar to the target image but look completely different. Previous work on the targeted attack for image retrieval only introduces a target-specific model and needs to train the model each time for new targets. We extend the attack adaptability by exploiting the target images as conditional input for the generative model. The proposed Adaptive Targeted Attack Generative Adversarial Network (ATA-GAN) is a GAN-based model with a generator and discriminator. The generator extracts the features of origin and target, then uses the Feature Integration Module to explore the relation between the target and original image to ignore the origin feature while paying more attention to the target. Simultaneously, the discriminator distinguishes the realness and ensures the adversarial example is similar to the origin. We evaluate and analyze the performance of the adaptive targeted attack on popular retrieval benchmarks.
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为基于内容的图像检索生成自适应目标对抗示例
互联网上大量可访问的个人数据增加了恶意检索的风险。在本文中,我们提出了基于内容的图像检索中使用有针对性的对抗性攻击来隐藏图像。在原始图像上加入难以察觉的扰动生成对抗样例,使检索结果与目标图像相似,但看起来完全不同。以往针对图像检索的针对性攻击研究只引入了针对特定目标的模型,每次都需要针对新的目标对模型进行训练。我们通过利用目标图像作为生成模型的条件输入来扩展攻击的适应性。提出的自适应目标攻击生成对抗网络(ATA-GAN)是一种基于gan的模型,具有生成器和鉴别器。生成器提取原点和目标的特征,然后利用特征集成模块探索目标与原始图像之间的关系,忽略原点特征而更加关注目标。同时,鉴别器区分真伪性,保证对抗样例与原点相似。我们在常用的检索基准上评估和分析了自适应目标攻击的性能。
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